iBet uBet web content aggregator. Adding the entire web to your favor.
iBet uBet web content aggregator. Adding the entire web to your favor.



Link to original content: http://www.mdpi.com/2071-1050/15/4/3735
Study on the Factors Affecting the Green Housing Purchase Intention in Urban Residents—Taking the Beijing-Tianjin-Hebei Region as an Example
Next Article in Journal
Polymer Banknotes: A Review of Materials, Design, and Printing
Previous Article in Journal
Shaping Tomorrow’s Arctic
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Study on the Factors Affecting the Green Housing Purchase Intention in Urban Residents—Taking the Beijing-Tianjin-Hebei Region as an Example

School of Economics, North China University of Science and Technology, Tangshan 063210, China
*
Author to whom correspondence should be addressed.
Sustainability 2023, 15(4), 3735; https://doi.org/10.3390/su15043735
Submission received: 17 November 2022 / Revised: 6 February 2023 / Accepted: 7 February 2023 / Published: 17 February 2023

Abstract

:
Green housing has the characteristics of energy saving, environmental protection and comfort. Promoting the development of green housing market is of great significance to accelerate the green transformation of the construction industry and help the construction sector achieve the emission reduction target. This paper takes urban residents in the Beijing-Tianjin-Hebei region as the research object, and based on the theory of planned behavior, identifies five influencing factors such as purchasing attitude, subjective norms, perceived behavior control, environmental concern and green housing product attributes, and builds a model of influencing factors of urban residents’ green housing purchase intention in the Beijing-Tianjin-Hebei region. The results show that subjective norms, perceived behavioral control, environmental concerns and green housing product attributes all have positive effects on the purchase intention, and their influence paths and effects on the purchase intention of green housing are different.

1. Introduction

Against the background of increasing issues such as climate change, energy shortage and environmental pollution, General Secretary Xi Jinping put forward new requirements for China’s carbon emissions at the 75th United Nations General Assembly—to achieve carbon peak in 2030 and carbon neutrality by 2060. Construction is the pillar industry of China’s social and economic development, and it is also the main industry of energy consumption and carbon emissions [1,2,3,4,5,6]. According to the 2021 China Construction Energy Consumption and Carbon Emission Research Report, the total energy consumption of the whole process of construction in 2019 is 2.233 billion tons, accounting for 45.9% of the national energy consumption; the total carbon emissions of the whole process of building in 2019 is 2.77 billion tons, accounting for 50.6% of the total carbon emissions nationwide. Thus, if the construction industry wants to achieve the goal of carbon peak and carbon neutrality, it must change the previous extensive development mode to achieve energy conservation and green sustainable development of the construction industry [7,8,9,10,11,12]. Therefore, popularizing green housing is the key to the transformation and development of the construction industry [13].
In the 1960s, the concept of ecological architecture proposed by American architect Paul Soleri emerged abroad and developed rapidly. Until the 1992 United Nations Conference on Environment and Development in Rio de Janeiro, Brazil, the concept of green housing is introduced into China and vigorously promoted [14]. In September 2004, the launch of the National Green Building Innovation Award marked that China’s green housing market has entered a stage of all-round development. The Beijing-Tianjin-Hebei region, as a region with rapid economic development in China, begins the exploration and application of green housing when the concept of green housing is introduced into China. After more than 20 years of efforts, by the end of 2020, the cumulative construction area of green housing in the Beijing-Tianjin-Hebei region was about 440 million square meters, and the development of green housing has achieved a huge process. The 2021 China Urban Green Building Development Competition Vitality Index Report objectively evaluates the current situation of green housing in 36 key cities across the country. According to the report, the green housing development competition vitality index in Beijing and Tianjin ranks 3rd and 5th, and Shijiazhuang is also at the middle reaches. In the field of green housing, the Beijing-Tianjin-Hebei region has always been at the forefront of the country.
Throughout the existing literature research, domestic and foreign scholars have achieved certain research results on the purchase intention of green housing. On the one hand, since the proposal of green housing, scholars from different countries have discussed the connotation of green housing from several aspects, such as resource saving and energy utilization, environmental protection and residential comfort. Yang Xiaodong and Wu Yongxiang believe that green housing, on the premise of having the characteristics of high resource utilization rate, energy saving and environmental protection, and low environmental damage rate, can also bring good living experience to residents and have a positive impact on urban residents’ purchase of green housing [15]. Guo Bin and Feng Ziyun proposed that green residence is a residential building that penetrates the concept of health and comfort, energy consumption reduction, and environmental damage to the whole life cycle of green residence [16]. Liu Yuezhang and Gu Jie believe that through the application of green technology, green housing can improve the utilization rate of resources, reduce energy consumption, and reduce the rate of environmental damage in the whole life cycle. At the same time, it can provide residents with a healthy and comfortable living environment and realize the harmonious symbiosis between humans and nature [17]. These studies have comprehensively interpreted the connotation of green housing and laid a solid foundation for the subsequent research on the factors influencing the purchase intention of green housing. On the other hand, as for the factors affecting the purchase intention of green housing, the existing research have studied it from the aspects of purchasing attitude, subjective norms, perceived behavior control, environmental concern, buyer’s attribute, green housing product attribute, government incentive policy and other aspects at multiple levels and angles. When discussing Chinese residents’ green consumption promotion strategies, Angel elaborated that residents’ consumption attitude, subjective factors and behavior control are important factors driving the formation of residents’ green consumption intention [18]. When Usamah studied the influencing mechanism of electric vehicle purchase intention of consumers in Pakistan, it was found that consumer attitude, subjective norms and perceived behavior control have significant positive effects on consumers’ purchase intention [19]. Paul et al., Yang Chen, Zhang Tuo et al. proved in the paper that environmental concern is one of the three main value concepts affecting consumers’ purchase of green products, and environmental concern has a positive impact on consumers’ purchase behavior and can predict their purchase behavior [20,21,22]. Yang Chen found that demographic characteristics, economy and other factors are important factors influencing consumers’ purchase of green agricultural products [21]. In the process of in-depth interview, Zhao Shiwen and Chen Liwen found that annual household income has a direct impact on consumers’ purchasing power and purchasing intention [23]. Li et al. found that obtaining reliable and accurate green housing information can promote homebuyers’ investment in green housing, and when green housing information is reduced, urban residents’ willingness to pay for green housing is significantly weakened [24]. Yang Jianping et al. analyzed the purchase intention of green housing and found that the characteristic information of green housing has an indirect positive effect on the purchase intention of consumers through the intermediary variables of consumer perceived value and ecological value [25]. When Arian evaluates utilitarian and hedonistic motivations that affect customers’ attitude toward green products and purchase intention, he finds that government policies have a positive impact on customers’ attitude and purchase intention [26]. These studies have comprehensively explained the factors affecting urban residents’ purchase of green houses. There are still the following shortcomings: First, abundant literatures at home and abroad have conducted in-depth studies on the purchase intention of green houses, but few of them combine environmental concerns with the attributes of green housing products; Second, in the existing literature, most scholars take a national perspective or a specific group as the research object, and few carry out targeted research on the Beijing-Tianjin-Hebei region. As a key area to promote green housing, the Beijing-Tianjin-Hebei region began to explore and apply green housing after the concept of green housing was introduced into China, and has made good achievements in the field of green building. As the end users of green housing, the choice preference of urban residents is very important to the development of green housing. How to predict the choice preference of urban residents to green housing becomes the key to the promotion of green housing, and also the basis of the healthy and stable development of green housing. However, there are few studies on the purchase intention of urban residents in the Beijing-Tianjin-Hebei region. As end users of green housing, urban residents’ green housing purchase intention affects the harmonious development of the green housing market in the Beijing-Tianjin-Hebei region [27,28,29]. At present, there is a deviation in the understanding of green housing among urban residents in the Beijing-Tianjin-Hebei region. There is insufficient understanding of the energy conservation, emission reduction and potential environmental protection value embodied in green housing, resulting in the insufficient willingness of urban residents to buy green housing, and insufficient effective demand for the green housing market in the Beijing-Tianjin-Hebei region. Thus, making the green housing market in the Beijing-Tianjin-Hebei region supply side supply power shortage [30,31]. Therefore, based on the theory of planned behavior, this paper identifies the factors affecting the purchase of green housing by urban residents in Beijing-Tianjin-Hebei region, builds a model of factors affecting the willingness of urban residents to buy green housing in Beijing-Tianjin-Hebei, and explores the effect and path of various factors on the green housing purchase intention of urban residents in Beijing-Tianjin-Hebei region, so as to promote the rapid development of the green housing market in Beijing-Tianjin-Hebei region [32,33,34].

2. Methods

After more than ten years of exploration and application in the green housing market, the Beijing-Tianjin-Hebei region has built the first ultra-low energy consumption green housing “on the Water Side” in China, the world’s largest ultra-low energy consumption green housing cluster project “Gaobidian · Train New City” and the most implemented green ecological city in China “China-Singapore Tianjin Ecological City” and other projects. It has always been in a leading position in terms of green housing development scale and green housing development competition vitality index. At present, the purchase intention of urban residents in the Beijing-Tianjin-Hebei region for green housing is insufficient, which makes the effective demand of the green housing market in the Beijing-Tianjin-Hebei region insufficient, and then the supply side in the green housing market is insufficient.
As a kind of psychological tendency in the purchase process of urban residents, the purchase attitude is the embodiment of the choice preference of urban residents in the Beijing-Tianjin-Hebei region when they buy green housing. The changes of population and family structure in the Beijing-Tianjin-Hebei region have changed the housing purchase concept of urban residents in the past, which plays an important role in the green housing purchase attitude of urban residents in the Beijing-Tianjin-Hebei region. Subjective norms describe the social perception of the behavior of urban residents in the Beijing-Tianjin-Hebei region to purchase green housing when they purchase green housing. Environmental concern describes the degree of attention urban residents have to the ecological environment in the Beijing-Tianjin-Hebei region. The education level of urban residents in the Beijing-Tianjin-Hebei region affects their attitudes towards the environment and their views on the purchase of green houses. Perceived behavioral control describes the perception of urban residents in the Beijing-Tianjin-Hebei region on the difficulty of their own green housing purchase behavior. The living standard and age structure of urban residents in the Beijing-Tianjin-Hebei region directly reflect the housing purchase ability of urban residents in the Beijing-Tianjin-Hebei region. The product attributes of green housing describe the basic characteristics of housing such as water, energy and electricity saving effect, comfort level and greening. The investment in real estate in the Beijing-Tianjin-Hebei region directly affects the construction situation and construction level of green housing in the Beijing-Tianjin-Hebei region.
Therefore, this chapter focuses on the analysis of the influence of five factors, including purchasing attitude, subjective norm, perceived behavioral control, environmental concern and green housing product attributes, on the green housing purchase intention of urban residents in the Beijing-Tianjin-Hebei region, providing some reference for the empirical study on the effect and path of the green housing purchase intention of urban residents in the Beijing-Tianjin-Hebei region below.

2.1. Influencing Factor Recognition and Research Hypothesis

2.1.1. Research Hypothesis of Purchasing Attitude

Purchasing attitude, as a psychological tendency, reflects the actor’s preference for a specific object, problem or entity [35]. Attitudes towards certain behaviors form a certain will and eventually translate into actual behaviors. The Research Report on the Current Situation of Green Consumption in China (2019 Edition) points out that the public’s attention to the environment has increased, the concept of green consumption has been popularized in the daily consumption of the public, and consumers’ intention to buy environmentally friendly green and sustainable products has been increasing. Han and Yoon pointed out in their research that willingness is positively influenced by attitudes, and clear attitudes—willingness theory plays a decisive role in green consumption [36]. The concept of buying houses for urban residents in the Beijing-Tianjin-Hebei region has changed. When buying a house, they pay more attention to the quality of houses and the living environment and have a positive attitude towards green housing. Therefore, the following assumptions are put forward:
H1. 
Purchasing attitude will positively promote purchasing willingness.

2.1.2. Research Hypothesis of Subjective Norm

Subjective norm refers to the social pressure that the doer feels when performing an action. The subjective norm describes the views of other people in society when urban residents in Beijing, Tianjin and Hebei carry out an act. On the one hand, the education level of urban residents in the Beijing-Tianjin-Hebei region has improved significantly, the illiteracy rate has steadily decreased, and the understanding of urban residents of green consumption has been significantly improved. The greater the social pressure on urban residents will be, the more active the attitude towards green consumption behavior of urban residents, and the stronger the willingness to adopt green consumption behavior; on the other hand, when the traditional consumption model accelerates the consumption of social resources, the utilization rate of resources continues to decline, the scarcity of resources continues to increase, and the price of resources continues to rise, the consumption cost of urban residents will continue to increase. Affected by subjective norms, the better the attitude towards green consumption of urban residents, the willingness of urban residents to green consumption will increase, and the attention of urban residents to the environment will also increase significantly. Therefore, the following assumptions are put forward:
H2. 
Subjective norm will positively promote purchasing attitude.
H3. 
Subjective norm will positively promote purchasing intention.
H4. 
Subjective norm will positively promote environmental concern.

2.1.3. Research Hypothesis of Perceptual Behavior Control

Perceptual behavior control refers to an individual’s perception of the ease of a specific behavior, reflecting the possibility of an individual successfully performing an action. Perceptual behavior control describes the perception of urban residents in the Beijing-Tianjin-Hebei region of the difficulty of buying green housing. The difficulty perceived by urban residents to buy green housing mainly includes three aspects: the perception of green housing, the price of green housing and the popularity of green housing. The perception of green housing mainly includes the economy of green housing, the functions of green housing and other information about green housing. When urban residents in Beijing-Tianjin-Hebei region buy green housing, the more understanding and cognition of green housing, the more positive urban residents’ buying attitude towards green housing, the stronger the purchase intention. Compared with ordinary houses, the price of green housing is slightly higher. However, the purchase of green housing has externalities. In order to promote urban residents to buy green housing, the governments of Beijing, Tianjin and Hebei have issued policy decrees to promote green consumption to reduce the purchase cost of green housing for urban residents. At the same time, compared with ordinary housing, green housing can save the resource costs of residents through solar energy and other resources in the later stage, and be more energy-saving and environmentally friendly, which can improve the attention of urban residents to the environment. The lack of popularity of green housing is not only easy to cause urban residents to have insufficient understanding of green housing and ignore green housing when buying houses, but also cause urban residents to buy houses but do not know green houses, want to buy but cannot buy them, affecting the sales of green housing [37,38]. Therefore, the popularity of green housing has a positive effect on perceptual behavior control, and has a positive impact on the purchasing attitude and green housing purchase intention in urban residents. Therefore, the following assumptions are put forward:
H5. 
Perceived behavior control will positively promote purchasing attitudes.
H6. 
Perceived behavior control will positively promote purchase intention.
H7. 
Perceived behavior control will positively promote environmental concern.

2.1.4. Research Hypothesis of Environmental Concern

Environmental concern is one of the important factors affecting sustainable green consumption in the field of green marketing [39]. From another perspective, environmental concern can be an important factor influencing the green consumption behavior of individuals. Wee-Lee Tan regards environmental concern as an influencing the purchase intention, confirming that environmental concern has an impact on the purchase intention [40,41].
In recent years, the education level of residents in the Beijing-Tianjin-Hebei region has increased significantly, and the illiteracy rate has steadily decreased. The per capita disposable income of urban residents in the Beijing-Tianjin-Hebei region has continued to increase, and the per capita consumption expenditure has risen steadily. Urban residents in the Beijing-Tianjin-Hebei region have paid significantly increased attention to the living environment and ecological problems, and green consumption. Preferences for attitudes and green consumption are also increasing. Zhang Duo empirically found that environmental concern has a positive effect on the green consumption behavior of urban residents [42]. Therefore, the following assumptions are put forward:
H8. 
Environmental concern will positively promote purchasing attitudes.
H9. 
Environmental concern will positively promote purchase intention.

2.1.5. Research Hypothesis of Green House Product Attributes

The green house product attributes reflect the basic characteristics of houses and are traditional information that urban residents pay attention to in the process of buying houses [43]. The green house product attributes reflect the core value of green housing, and they are also fundamental attributes that distinguish green housing from other houses. In the process of buying houses, it affects the purchasing attitude and intention of urban residents in the Beijing-Tianjin-Hebei region. The research of Wang Weimin and Liu Andong shows that the green house product attributes can promote the purchasing attitude and intention of urban residents [44]. Therefore, the following assumptions are put forward:
H10. 
Green house product attributes will positively promote the purchasing attitude.
H11. 
Green house product attributes will positively promote thepurchase intention.

2.2. Structure Equation Model Construction

Based on the theory of planned behavior, two influencing factors: environmental concern and green house product attributes are added to build a model of the structure equation of green housing purchase intention of urban residents in Beijing, Tianjin and Hebei. The initial path diagram of the model is shown in Figure 1:

2.3. Design and Development of Research Scale

The data required for empirical evidence are collected through the research scale, which is distributed to urban residents who are preparing to buy green housing in the Beijing-Tianjin-Hebei region. In the process of scale design, regional restrictions are set, and only urban residents living in the Beijing-Tianjin-Hebei region can fill in the questionnaire. At the same time, set test questions in the questionnaire and eliminate random or serious questionnaires to ensure the validity of the questionnaire data.
The scale indicator evaluation plate is developed and designed, and each potential variable is quantified through at least three observational variables. The specific questions are as follows: Table 1.

2.4. Sample Data Collection

The sample data collection stage is divided into two stages: pre-investigation and formal investigation. In the pre-survey stage, the theoretical hypothesis is preliminarily explored, while in the formal survey stage, more emphasis is placed on the scientificity and rigor of the survey work. Therefore, compared with the initial scale, the formal scale requires the sample size.
Compared with other models, structural equation model is more suitable for large sample analysis. The larger the number of samples, the better the stability of statistical analysis and the applicability of various indicators. It is generally believed that the sample size of structural equation model test should exceed 200. However, if the sample size is too large, the absolute fit index is more likely to reach a significant level in structural equation fittest, that is, the probability of the hypothesis model and the actual data being inconsistent will increase, which will increase the possibility of model rejection. Therefore, most scholars believe that the sample size should be between 200 and 500 is appropriate, but more than 500 is also acceptable in behavioral and social science studies. Some scholars believe that the sample size depends on the number of scale items and observed variables. Chin believes that the sample size should be 10–15 times of observed variables [45].
This scale includes 6 latent variables, including purchasing attitude, subjective norms, perceived behavior control, environmental concern, green housing product attributes and purchase intention, and 25 measurement items. A total of 325 valid questionnaires were obtained, and the effective rate of the questionnaires was 92.85%. No matter which viewpoint is referred to above, the sample size meets the requirements and can meet the requirements of structural equation model analysis.

3. Results

3.1. Reliability Test

Resonance refers to the stability or consistency of the results obtained by repeatedly measuring the same object with the same measurement method, which reflects the accuracy of the measurement. The higher the reliability, the more reliable the measurement results, the better the stability, and the higher the accuracy. In this paper, Cronbach’s alpha coefficient is selected to test whether the scale has a high degree of internal consistency. The higher the Cronbach’s alpha coefficient, the higher the reliability of each component table. In order to improve the quality of the questionnaire, the reliability test is bounded by 0.5, which should be accepted when the Cronbach’s alpha coefficient is not less than 0.5, and the questionnaire should be modified when it is less than 0.5.
Resonance analysis is carried out through SPSS26.0 statistical analysis software, and the reliability analysis test results are shown in Table 2 above. It can be found in the table that the Cronbach’s alpha coefficient of six potential variables, such as purchasing attitude, subjective norm, perceptual behavior control, environmental concern, green housing product attributes, and purchase intention, is greater than 0.5. Therefore, it can be considered that the scale has a relatively high reliability. After passing the reliability test, the next research can be carried out.

3.2. Validity Test

Validity is the degree to which the measurement method measures the characteristics of the measurement index, which is generally tested by factor analysis. The higher the validity, the more effective the measurement method can reflect the characteristics of the measured variable. Even if the reliability test is passed, if the validity test fails, the model still needs to be adjusted.
The paper analyzes validity through SPSS26.0 software, and the validity analysis test results are shown in Table 3 below.
From the data in the table, it can be found that the KMO value of the six research variables and the questionnaire as a whole is greater than 0.5, and the significant level of the model is less than 0.001, indicating that the statistics recovered from the questionnaire can be analyzed in the next step.

3.3. Exploratory Factor Analysis

The paper uses the principal component analysis method of SPSS26.0 software to analyze six control variables: purchase attitude, subjective norm, perceptual behavior control, environmental concern, green housing product attributes and purchase intention. It is forcibly divided into six principal component factors and analyzed by variance maximization orthogonal rotation. After PA2, GPA2, GPA4 and PW4 that are not distributed in the same principal component were deleted, the exploratory factor analysis is carried out again. The analysis results are shown in Table 4.
The analysis results in Table 4 show that the variables in the model are aggregated in six dimensions, indicating that all the measurement variables involved in the model can be classified into six categories, the same as expected. The table shows that the factor load coefficient of each measurement variable on its respective research variables is greater than 0.5, indicating that the questionnaire has a good convergence validity; the factor load coefficient of each measurement variable on other research variables is less than 0.5, indicating that the questionnaire has a good differentiated validity. The interpretation rate values of the variance of the six factors are 10.310%, 9.628%, 9.139%, 9.136%, 8.502% and 8.300%, respectively, and the cumulative variance interpretation rate after rotation is 55.016% > 50%, indicating that the amount of information of the research item can be effectively extracted.

3.4. Verification Factor Analysis

AMOS 24.0 statistical software is used to analyze the survey data of purchase attitude, subjective norm, perceptual behavior control, environmental concern, green housing product attributes and purchase intention, respectively, to test the validity of the measurement scale. The analysis results are shown in Table 5.
From Table 5, it can be found that the standardized factor load value of the purchase attitude, subjective norm, perceptual behavior control, environmental concern, green housing product attributes and purchase intention are basically between 0.50 and 0.95, indicating that the basic suitability of the model is good. In addition, C.R. of all variables the value is greater than 2.58, indicating that the estimated value of each parameter has reached a significant level of significant probability p = 0.01.

3.5. Model Adaptability Test

The study selected the seven indicators of Χ2/df, GFI, RMSEA, RMR, CFI, PGFI and NNFI proposed by Hu and Bentler to test the fit effect of the overall model [46,47]. The fitting index calculated using AMOS 24.0 statistical analysis software is shown in Table 6. Χ2/df, GFI, RMSEA, RMR, CFI, PGFI and NNFI all meet the relevant evaluation indicators. The overall model fitting of the green housing purchase intention model basically meets the adaptation standard.

3.6. Model Hypothesis Test

The results of the initial model are calculated using AMOS 24.0, and the overall result path diagram of the model is obtained, as shown in Figure 2.
Among them, “purchase intention ← purchase attitude”, “purchase attitude ← subjective norm”, “purchase intention ← subjective norm”, “environmental concern ← subjective norm”, “purchase attitude ← perceived behavior control”, “purchase intention ← perceived behavior control”, “environmental concern ← perceived behavior control “, “purchase attitude ← environmental concern”, “purchase intention ← environmental concern”, “purchase attitude ← green housing product attribute” and “purchase intention ← green housing product attributes” are 0.228, 0.350, −0.040, 0.350, 0.147, −0.071, 0.446, −0.022, 0.270, 0.562, 0.601.
The hypothesis test of the model is shown in Table 7. At the significant level of 0.05, the hypothesis that H1, H5, H6 and H8 are rejected means that the hypothesis that the purchasing attitude has a positive effect on the purchase intention is not valid, the hypothesis that the subjective norm has a positive effect on the purchase intention is not valid, the hypothesis that perceptual behavior control has a positive effect on the purchase attitude is not valid, the hypothesis that perceptual behavior control has a positive effect on the purchase intention is not valid, and the hypothesis that environmental concern has a positive effect on the purchase intention is not valid; the hypothesis that H2, H4, H7, H9, H10, and H11 are true means that the hypothesis that subjective norm has a positive effect on purchasing attitude is valid, the hypothesis that subjective norm has a positive effect on environmental concerns is valid, the hypothesis that perceived behavioral control has a positive effect on environmental attention is valid, the hypothesis that environmental concern has a positive effect on purchase intention is valid, the hypothesis that green housing product attributes have a positive effect on purchasing attitude is valid, the hypothesis that green housing product attributes have a positive effect on purchase intention is valid.
There is an impact effect between each variable in the model. According to the relationship strength between variables, it is divided into direct effect and indirect effect. Direct impact effect refers to the direct influence of variable a on variable b, which can be expressed by path coefficients; indirect effect refers to the indirect influence of variable a on variable b through one or more intermediate variables, which can be expressed by the product of the coefficients of two paths. The total effect is the sum of direct effect and indirect effect. Calculate the impact coefficient between the purchase attitude, subjective norm, perceptual behavior control, environmental concern, and green housing product attributes on the purchase intention according to the path diagram of the optimal model. The calculation results are shown in Table 8.
The results show that the impact coefficient of green housing product attribute variables on urban residents’ green housing purchase intention is the largest, with a total effect coefficient of 0.78, followed by environmental concern and perceptual behavior control variables, with total effect coefficients of 0.25 and 0.11, respectively. Among them, the purchase attitude variable has no significant effect on the green housing purchase intention.

4. Research Results and Discussion

Using the structural equation model, this paper builds a model of factors affecting the green housing purchase intention of urban residents in Beijing, Tianjin and Hebei. Through empirical research, the influence path and effect of factors such as purchase attitude, subjective norm, perceptual behavior control, environmental concern and green housing product attribute on the green housing purchase intention are obtained. The main content of this section is to summarize the research results of this paper and put forward the research discussion.

4.1. Results

4.1.1. Impact Path

Empirical results show that the influence path of potential variables on the green housing purchase intention of urban residents in the Beijing-Tianjin-Hebei region mainly includes three paths: subjective norm → environmental concern → green housing purchase intention, perceptual behavior control → environmental concern → green housing purchase intention and green housing product attributes → green housing purchase intention.
The subjective norm describes how urban residents in the Beijing-Tianjin-Hebei region view green housing when they buy it. On the one hand, the high education level of urban residents in the Beijing-Tianjin-Hebei region means that they have a high awareness of ecological and environmental protection and environmental attention, and the concept of green consumption is popularized in the daily life of the general public. On the other hand, in the context of the increasingly serious shortage of social resources and the increasing scarcity of resources, the Beijing-Tianjin-Hebei region, as a relatively rapid economic development area, has serious environmental pollution leads to a stronger yearning for a good living environment and a higher green housing purchase intention for urban residents. Based on this, subjective normative factors indirectly affect urban residents’ purchase intention of green housing in the Beijing-Tianjin-Hebei region through environmental concerns.
Perceptual behavior control describes the perception of urban residents of the ease of purchasing green housing. On the one hand, the labor force accounts for nearly 70% of the total population among urban residents in Beijing, Tianjin and Hebei, and the per capita disposable income has increased steadily. They have a certain ability to buy a house now or in the future. On the other hand, the improvement of the living standard of residents in the Beijing-Tianjin-Hebei region has put forward new requirements for the living environment in addition to meeting the basic living needs of human beings. Compared with the past, we pay more attention to ecological and environmental issues, and have a stronger green housing purchase intention with the characteristics of energy conservation, environmental protection and comfort. Based on this, perceptual behavior control factors indirectly affect urban residents’ purchase intention of green housing in Beijing, Tianjin and Hebei through environmental concerns.
Green housing has the characteristics of energy saving, environmental protection and comfort. Different from traditional housing, it can attract the attention of residents and stimulate their purchase intention. The water-saving and energy-saving effect, comfort and greening of green housing are all important aspects that urban residents need to consider when buying green housing. These factors will directly affect urban residents’ purchase intention of green housing in the Beijing-Tianjin-Hebei region.

4.1.2. Influencing Effect

The green housing product attributes have the greatest impact on urban residents’ purchase intention of green housing in Beijing, Tianjin and Hebei, with a total effect coefficient of 0.78. The water-saving, energy-saving and power-saving effect, comfort, greening level and other factors are the main concerns of residents when buying houses, which directly affect urban residents’ purchase intention of green housing in Beijing, Tianjin and Hebei.
Environmental concerns have an impact on urban residents’ purchase intention of green housing in Beijing, Tianjin and Hebei, with a total effect coefficient of 0.25. At present, problems such as climate change, energy shortage and environmental degradation are becoming increasingly prominent, which have seriously affected the living space and quality of life of residents. Environmental problems have attracted the attention of all countries around the world and has become one of the major problems in today’s society. The educational level of urban residents in the Beijing-Tianjin-Hebei region is higher than that of other regions, pays more attention to the ecological environment, and is more inclined to green consumption. Therefore, the attention of urban residents to the environment in the Beijing-Tianjin-Hebei region directly affects their housing purchase intention.
Subjective norms and perceptual behavior control indirectly affect urban residents’ purchase intention of green housing in Beijing, Tianjin and Hebei through environmental concern, with indirect impact coefficients of 0.09 and 0.11, respectively. Green housing is an inevitable trend of urban housing development in the 21st century, an inevitable product to cater to the changes in residents’ housing demand in the 21st century, and also an inevitable result of saving resources and protecting the environment. However, green housing appeared late, the concept of green housing has not been fully popularized, and urban residents in Beijing-Tianjin-Hebei region have a low degree of recognition of green housing. Therefore, subjective normative factors and perceptual behavior control factors have an impact on urban residents’ purchase intention of green housing in Beijing, Tianjin and Hebei through environmental concern, but the impact is relatively small.
The purchasing attitude has no significant impact on urban residents’ purchase intention of green housing in the Beijing-Tianjin-Hebei region, and its overall effect coefficient on the green housing purchase intention is 0. Residents’ purchasing attitude is an expression of residents’ purchase intention, which is related to residents’ purchase intention to a certain extent. However, as an emerging residential product, green housing is still in the stage of exploration and improvement. Most urban residents in the Beijing-Tianjin-Hebei region still have a superficial understanding of green housing, and their understanding of green housing is not deep enough. As a large consumer good, although residents have a positive attitude towards green housing, it is not enough to turn the buying attitude into the purchase intention.

4.2. Discussion

The influencing factor model of green housing purchase intention of urban residents in the Beijing-Tianjin-Hebei region constructed in this paper not only enriches the theoretical research on influencing factors of green housing purchase intention of urban residents in the Beijing-Tianjin-Hebei region, but also speeds up the green transformation of the construction industry and helps the construction sector achieve the goal of carbon peak and carbon neutrality. At the same time, it also provides a reference basis for guiding urban residents to actively buy green housing and formulating relevant policies, so as to help the orderly development of the green housing market in the Beijing-Tianjin-Hebei region. Over time, in other parts of China, there will be more areas to build green homes. At that time, by effectively grasping the factors affecting urban residents’ willingness to buy green housing, relevant policies can be formulated more efficiently and accurately, and the direction of future development of the green housing market can be better grasped, so as to promote the healthy and orderly development of the green housing market and bring large-scale economic benefits to the society. At the same time, green housing suppliers can more accurately grasp the choice preferences of urban residents, provide urban residents with green housing projects more adaptable to the characteristics of demand, and achieve a win–win situation of economic benefits, ecological benefits and social benefits.

5. Research Conclusions and Limitation

This paper takes urban residents in the Beijing-Tianjin-Hebei region as the research object and uses the theory of planned behavior to study the green housing purchase intention of urban residents in the Beijing-Tianjin-Hebei region. Among the influencing factors of urban residents’ green housing purchase intention, this paper identifies five influencing factors, including purchasing attitude, subjective norms, perceived behavior control, environmental concern and green housing product attributes, and builds a model of influencing factors of urban residents’ green housing purchase intention in the Beijing-Tianjin-Hebei region. In the study of purchasing intention measurement, it is found that: Subjective norms, perceived behavioral control, environmental concerns and green housing product attributes have a positive impact on purchase intention, among which the influence coefficient of green housing product attributes on purchase intention is the largest, 0.78, mainly because green housing product attributes are the main concern factor of urban residents when buying houses, and directly affect the purchase intention of urban residents. However, due to the limitations of various factors in reality, there are still the following deficiencies:
(1) The exploration of driving factors and the limitations of scale development. In view of the fact that the purchase of green housing by urban residents is a complex process affected by many factors, although this paper explores the influencing factors on the basis of literature research and theoretical analysis, and develops a survey scale in line with the reality of the Beijing-Tianjin-Hebei region of China on this basis, and tests the effectiveness of the scale through pre-investigation and formal investigation, it is difficult to avoid subjective factors. Nor can it fully cover all the influencing factors. In the follow-up study, behavioral experiments and other research methods can be considered for further research.
(2) Limitations of research samples. Due to the limitation of investigation conditions and time, 250 valid questionnaires were collected through the network in the study of influencing factors. Although it can better represent the sample situation of residents in the Beijing-Tianjin-Hebei region and meet the basic requirements of the statistical research methods for samples, there are still some deficiencies in the regional distribution of the survey samples. Follow-up research can further expand the survey samples.

Author Contributions

Y.W. designed the study, analyzed the sample data and wrote the first draft of the paper. W.R. contributed to the research design, data analysis and improvement of the paper writing. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Not applicable.

Acknowledgments

We would like to thank all the interviewees for their careful filling in the questionnaire and all the teachers from the School of Economics of North China University of Science and Technology for their helpful suggestions on this paper.

Conflicts of Interest

The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

References

  1. Wang, H.Q.; Guo, Q.J.; Li, S.L. Research on the Measurement of the Coordinated Development of Construction Industry-Urbanization-Economy—Based on the Empirical Analysis of 31 Provinces of Chine. Mod. Manag. 2022, 2, 9. [Google Scholar]
  2. Li, H.Y.; Chen, X.H. Research on Urbanization and Ecological Environment Coupling Development Based on SD Model: A Case in Eastern Coal-Electricity Base of Heilongjiang Province. Ecol. Econ. 2014, 12, 109. [Google Scholar]
  3. Shi, T.T.; Xu, H.Q.; Tang, F.F. Built-up land change and its impact on ecological quality in a fast-growing economic zone: Jinjiang County, Fujian Province, China. Chin. J. Appl. Ecol. 2017, 4, 1317. [Google Scholar]
  4. Lu, N.; Zhang, Z.F.; Liang, Y.Z.; Huang, Y.F. Assessing the Impact of Urbanization and Eco-Environmental Quality on Regional Carbon Storage: A Multiscale Spatio-Temporal Analysis Framework. Remote Sens. 2022, 16, 4007. [Google Scholar]
  5. Zhang, J.J.; Zhou, Q.; Cao, M.; Liu, H. Spatiotemporal Change of Eco-Environmental Quality in the Oasis City and Its Correlation with Urbanization Based on RSEI: A Case Study of Urumqi, China. Sustainability 2022, 15, 9227. [Google Scholar] [CrossRef]
  6. Xu, D. Understanding the Relationship between China’s Eco-Environmental Quality and Urbanization Using Multisource Remote Sensing Data. Remote Sens. 2022, 1, 198. [Google Scholar] [CrossRef]
  7. Wu, X.L.; Wang, D.; Chao, J.F. Energy Efficiency, Economic Growth and Ecological Environment Quality: Based on the DSGE Model Containing Carbon Emissions. J. Technical Econ. Manag. 2022, 10, 28. [Google Scholar]
  8. Sun, Q.; Chen, Y.C.; Lu, J.M.; Zhao, Y.L. Spatiotemporal evolution of urban green space and ecological quality in Beijing-Tianjin-Hebei region. J. Taiyuan Univ. Technol. 2023, 1, 1. [Google Scholar]
  9. Jing, M.D.; Zhou, H.; Wang, Q. The impact of eco-environmental quality on urban economic efficiency. Urban Probl. 2022, 1, 15. [Google Scholar]
  10. Deng, L.J. Carbon neutral green transition, green investment and ecological environment quality. Stat. Decis. 2021, 18, 55. [Google Scholar]
  11. Zhang, F.Y.; Zhou, M.; Li, Y.L.; Lin, L.Y.; Ma, G.W.; He, L.H.; Chen, S.R. Characteristics of Eco-environmental Quality Changes in China During the 13th Five-Year Plan Period. Environ. Monit. China 2021, 3, 1. [Google Scholar]
  12. Xing, Y.C.; Guo, Y.F.; Wang, L. Dynamic measurement of eco-environmental quality in our country. Stat. Decis. 2021, 3, 81. [Google Scholar]
  13. Qiu, B.X. Urban Carbon Neutralization and Green Building. Urban Dev. Stud. 2021, 7, 1. [Google Scholar]
  14. Zhou, H.; Wang, W.; Wei, H.; Chong, M.; Xing, W.; Li, Y. Demand Analysis and Prospect of High-Quality Development of Green Building in China. Build. Sci. 2018, 9, 148. [Google Scholar]
  15. Yang, X.; Wu, Y.X. Factor analysis and relationship research of green housing choice behavior. China Soft Sci. 2017, 6, 175–182. [Google Scholar]
  16. Guo, B.; Feng, Z.Y. Study on optimal selection of incentive model of green housing from the perspective of dynamic game. Ecol. Econ. 2018, 34, 83–88. [Google Scholar]
  17. Liu, Y.Z.; Gu, J. Overview of green housing development research in our country. Shanghai Real Estate 2019, 47, 29–33. [Google Scholar]
  18. An, Q. Discussion on the strategy of green consumption improvement of Chinese residents under the “dual carbon” goal. Bus. Econ. Res. 2022, 6, 62–65. [Google Scholar]
  19. Usamah, S. Electric vehicle development in Pakistan: Predicting consumer purchase intention. Clean. Resp. Consump. 2022, 5, 100065. [Google Scholar]
  20. Paul, J.; Modi, A.; Patel, J. Predicting green product consumption using theory of planned behavior and reasoned action. J. Retail. Consum. Serv. 2016, 29, 123–134. [Google Scholar] [CrossRef]
  21. Yang, C. Theoretical logic and practical basis of online marketing of eco-green agricultural products in China. Price Theor. Pract. 2020, 27, 31–34, 134. [Google Scholar]
  22. Zhang, D. Study on consumer behavior of green products from the perspective of environmental Concern. Price Theor. Pract. 2021, 6, 197–200. [Google Scholar]
  23. Zhao, S.W.; Chen, L.W. Influencing Factors and mechanism of green housing purchase Intention: Based on Grounded theory. Bus. Econom. 2020, 235, 28–36. [Google Scholar]
  24. Zhang, L.; Sun, C.; Liu, H.Y.; Zheng, S. The role of public information in increasing homebuyers’ willingness-to-pay for green housing: Evidence from Beijing. Ecol. Econ. 2016, 129, 40–49. [Google Scholar] [CrossRef]
  25. Yang, J.P.; Wang, D.F.; Song, J.Z.; Shi, X. Study on the influence mechanism of green housing purchase intention considering information asymmetry. Ecol. Econ. 2019, 35, 74–79+85. [Google Scholar]
  26. Matin, A.; Khoshtaria, T.; Marcan, M.; Datuashvili, D. The roles of hedonistic, utilitarian incentives and government policies affecting customer attitudes and purchase intention towards green products. Int. Rev. Public Nonprofit Market. 2021, 22, 27. [Google Scholar] [CrossRef]
  27. Amos, D.; Chan, A.P.C. Review of Barriers to Green Building Adoption. Sustain. Dev. 2017, 25, 167–179. [Google Scholar]
  28. Amos, D.; Zhang, C.Z.; Chan, A.P.C. Drivers for green building: A review of empirical studies. Habitat Int. 2017, 60, 34. [Google Scholar]
  29. Teng, J.; Mu, X.; Wang, W.; Xu, C.; Liu, W. Strategies for Sustainable Development of Green Buildings. Sustain. Cities Soc. 2018, 44, 215. [Google Scholar] [CrossRef]
  30. Li, Z.Y.; Liu, J.S. Research on the Development and Countermeasures of Green Building under the Goal of “Carbon Peak and Carbon Neutrality”. Southwest Finan. 2021, 10, 55. [Google Scholar]
  31. Narin, G. Real example analysis of housing consumption of dweller of our country town. Sci. Technol. Innov. 2017, 13, 294. [Google Scholar]
  32. Zhao, N.; Zhang, J.W.; Zhao, Y.L.; Chen, Y.T. Some thoughts on promoting the healthy development of residential housing consumption. Price Theor. Pract. 2023, 1, 1. [Google Scholar]
  33. Yu, J.; Yang, H.H.; Chen, R.R.; Ding, Z. Temporal and spatial differentiation of the coupling coordination between eco-city urbanization and ecological environment. J. Shand. Univ. Nat. Sci. 2022, 11, 102. [Google Scholar]
  34. Xu, D.; Yang, F.; Yu, L.; Zhou, Y.Y.; Li, H.X.; Ma, J.J.; Huang, J.C.; Wei, J.; Xu, Y.; Zhang, C.; et al. Quantization of the coupling mechanism between eco-environmental quality and urbanization from multisource remote sensing data. J. Clean. Prod. 2021, 321, 128948. [Google Scholar] [CrossRef]
  35. Perloff, R.M. The Dynamics of Persuasion, 7th ed.; Routledge: New York, NY, USA, 2020. [Google Scholar]
  36. Han, H.; Yoon, H.J. Hotel customers’ environmentally responsible behavioral intention: Impact of key constructs on decision in green consumerism. Int. J. Hosp. Manag. 2015, 45, 22. [Google Scholar] [CrossRef]
  37. Liu, Y.; Hong, Z.; Zhu, J.; Yan, J.; Qi, J.; Liu, P. Promoting green residential buildings: Residents’ environmental attitude, subjective knowledge, and social trust matter. Energy Policy 2018, 112, 152. [Google Scholar] [CrossRef]
  38. Melika, R.; Seyed, M.H.; Iraj, M.M. Proposing a socio-psychological model for adopting green building technologies: A case study from Iran. Sustain. Cities Soc. 2019, 45, 657. [Google Scholar]
  39. Brenton, M.W.; Deniz, S.O.; Stephan, D. Age and environmental sustainability: A meta-analysis. J. Manag. Psychol. 2013, 7/8, 826. [Google Scholar]
  40. Ning, R.Y.M. Research on the influence mechanism of customer perception Externalities on green purchasing behavior. Enterp. Econ. 2020, 3, 59. [Google Scholar]
  41. Yang, X.D.; Wu, Y.X. Choice Behavior for Green Residential Building: Factors and Relationships. China Soft Sci. 2017, 1, 175. [Google Scholar]
  42. Tanw, L.; Goh, Y.N. The role of psychological factors in influencing consumer purchase intention towards green residential building. Int. J. Hous. Mark. Anal. 2018, 5, 788. [Google Scholar] [CrossRef]
  43. Zhang, D. Research on Consumers’ Behavior of Green Products from the Perspective of Environmental Concern. Price Theory Pract. 2021, 5, 9197. [Google Scholar]
  44. Wang, W.M.; Liu, A.D. Empirical study on influencing factors of consumers’ green house purchase behavior. J. Xi’an Univ. Archit. Technol. Nat. Sci. Edit. 2018, 3, 454. [Google Scholar]
  45. Gefen, S.B.M. Structural Equation Modeling and Regression: Gridlines for Research Practice. Commun. Assoc. Inf. Syst. 2000, 4, 7. [Google Scholar] [CrossRef] [Green Version]
  46. Hu, L.; Bentler, P.M. Fit indices in covariance structure modeling. Psychol. Methods 1998, 3, 424. [Google Scholar] [CrossRef]
  47. Hu, L.; Bentler, P.M. Cutoff criteria for fit indices in covariance structure analysis: Conventional criteria versus new alternatives. Struct. Equ. Model. 1999, 6, 1. [Google Scholar] [CrossRef]
Figure 1. Initial model path diagram.
Figure 1. Initial model path diagram.
Sustainability 15 03735 g001
Figure 2. Green housing purchase intention model path coefficient diagram.
Figure 2. Green housing purchase intention model path coefficient diagram.
Sustainability 15 03735 g002
Table 1. Potential variables and measurement projects.
Table 1. Potential variables and measurement projects.
Potential VariableMeasurement Project
Purchasing
Attitude
(PA)
I think it is wise to buy a green housing (PA1)
I think it is beneficial to buy a green housing (PA2)
I think it is a good idea to buy a green housing (PA3)
I think it is pleasant to buy a green housing (PA4)
I think it is very important to buy a green housing (PA5)
Subjective Norm (SN)The people who are important to me think I should buy a green housing (SN1)
Under social pressure, I think I should buy a green housing (SN2)
Under social pressure, I think many people will buy green housing (SN3).
If I buy a green housing, those who are important to me will fully agree (SN4)
Perceptual
Behavior Control (PBC)
I think I have a lot of control over buying a green housing (PBC1)
If I want to, it is easy for me to buy a green housing (PBC2)
Whether to buy a green housing or not mainly depends on myself (PBC3)
Environmental Concern (EC)I often pay attention to environmental information and reports and advertisements related to green products (EC1)
I often talk to others about environmental problems or green products (EC2)
I think I am an environmentally friendly consumer (EC3)
I think I am a person who is very concerned about environmental issues (EC4)
Green House
Product Attributes (GPA)
I think green housing has better water-saving and energy-saving performance than ordinary housing (GPA1)
I think green housing are more comfortable than ordinary housing (GPA2)
I think green housing has better greening effect than ordinary housing (GPA3)
I think the development of green housing is conducive to the overall improvement of the current social environment (GPA4)
I think the development of green housing can improve the overall public’s awareness of environmental protection (GPA5)
Purchase
Intention
(PI)
I want to live in a green housing (PI1)
I am willing to buy a green housing in the future (PI2)
I would consider a green house for my next home purchase (PI3)
I plan to buy a green housing (PI4)
Table 2. Reliability test and analysis results.
Table 2. Reliability test and analysis results.
Potential VariablesStandardized
Cronbach’s α
Number of Measurement Questions
Purchasing Attitude (PA)0.6015
Subjective Norm (SN)0.6614
Perceptual Behavior Control (PBC)0.5803
Environmental Concern (EC)0.6904
Green Housing Product Attributes (GPA)0.6245
Purchase Intention (PI)0.6064
Total0.81825
Source: authors’ own analysis.
Table 3. Measurement variable validity test table.
Table 3. Measurement variable validity test table.
Potential VariablesKMO ValueBartlett Sphere Test
Approximate ChampionDegree of FreedomSignificant Level
Purchasing Attitude (PA)0.714113.043100.000
Subjective Norm (SN)0.686156.21360.000
Perceptual Behavior Control (PBC)0.61974.85430.000
Environmental Concern (EC)0.727165.97960.000
Green Housing Product Attributes (GPA)0.681152.800100.000
Purchase intention (PI)0.628128.43760.000
Total0.7901516.8073000.000
Source: authors’ own analysis.
Table 4. Exploratory factor analysis results.
Table 4. Exploratory factor analysis results.
Research VariablesMeasurement ItemsFactor Load Coefficient
123456
Purchasing Attitude
(PA)
PA1 0.4950.580
PA3 0.670
PA4 0.514
PA5 0.676
Subjective Norm
(SN)
SN 1 0.515
SN 2 0.813
SN 3 0.783
SN 4 0.522 0.310
Perceptual Behavior
Control (PBC)
PBC1 0.609
PBC2 0.737
PBC3 0.715
Environmental Concern (EC)EC10.741
EC20.628
EC30.675
EC40.689
Green House Product
Attributes (GPA)
GPA1 0.748
GPA3 0.4110.619
GPA5 0.618
Purchase Intention (PI)PI 1 0.5170.388
PI 2 0.765
PI 3 0.668
Variance Interpretation Rate (%)10.310%9.628%9.139%9.136%8.502%8.300%
Cumulative Variance Interpretation Rate (%)10.310%19.938%29.077%38.214%46.716%55.016%
Source: authors’ own analysis (Only values with factor load coefficient greater than 0.30 are shown).
Table 5. Verification factor analysis results.
Table 5. Verification factor analysis results.
Research VariablesMeasurement ItemsStandardized Factor LoadStandard Error (S.E.)Critical Ratio (C.R.)
Purchasing
Attitude (PA)
PA10.627----
PA30.4560.1475.319
PA40.4470.1375.224
PA50.4370.1764.965
Subjective Norm (SN)NA10.434----
NA20.7450.3685.337
NA30.6250.3135.248
NA40.5040.2245.110
Perceptual Behavior Control (PBC)PBC10.492----
PBC20.4980.3484.798
PBC30.7070.3504.523
Environmental
Concern
(EC)
EC10.615----
EC20.5490.1496.620
EC30.6260.1456.891
EC40.5810.1386.695
Green House Product Attributes (GPA)GPA10.592----
GPA30.6050.1785.958
GPA50.4890.1595.492
Purchase Intention (PI)PW10.743----
PW20.4930.1086.077
PW30.5180.1046.400
Source: authors’ own analysis.
Table 6. Analysis of the overall fitting degree of the initial model.
Table 6. Analysis of the overall fitting degree of the initial model.
Fitting IndexΧ2/dfGFIRMSEARMRCFIPGFINNFI
Adaptation Critical Value<3>0.80<0.08<0.10>0.80>0.50>0.80
Verify the Model1.9230.8920.0590.0860.8320.6870.802
Source: authors’ own analysis.
Table 7. Assumption Results.
Table 7. Assumption Results.
HypothesisPath CoefficientC.R.pHypothetical Conclusions
H1: Purchasing Intention ← Purchasing Attitude0.2281.4300.153Rejection
H2: Purchasing Attitude ← Subjective Norm0.3502.9940.003Support
H3: Purchasing Intention ← Subjective Norm−0.040−0.3590.720Rejection
H4: Environmental Concern ← Subjective Norm0.3503.345***Support
H5: Purchasing Attitude ← Perceptual Behavior Control0.1471.2340.217Rejection
H6: Purchase Intention ← Perceived Behavior Control−0.071−0.6260.531Rejection
H7: Environmental Concern ← Perceptual Behavior Control0.4463.931***Support
H8: Purchasing Attitude ← Environmental Concern−0.022−0.1680.867Rejection
H9: Purchasing Intention ← Environmental Concerns02702.3180.020Support
H10: Purchasing Attitude ← Green Housing Product Attributes0.5624.375***Support
H11: Purchasing Intention ← Green Housing Product Attributes0.6013.646***Support
Source: authors’ own analysis. *** in the table means p < 0.001.
Table 8. Effect Coefficient of Potential Variables on Purchase Intention.
Table 8. Effect Coefficient of Potential Variables on Purchase Intention.
Potential VariablesDirect Influence EffectIndirect Influence EffectTotal Effect
Purchasing Attitude0.000.000.00
Subjective Norm0.000.090.09
Perceptual Behavior Control0.000.110.11
Environmental Concern0.250.000.25
Green Housing Product Attribute0.780.000.78
Source: authors’ own analysis.
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Ren, W.; Wang, Y. Study on the Factors Affecting the Green Housing Purchase Intention in Urban Residents—Taking the Beijing-Tianjin-Hebei Region as an Example. Sustainability 2023, 15, 3735. https://doi.org/10.3390/su15043735

AMA Style

Ren W, Wang Y. Study on the Factors Affecting the Green Housing Purchase Intention in Urban Residents—Taking the Beijing-Tianjin-Hebei Region as an Example. Sustainability. 2023; 15(4):3735. https://doi.org/10.3390/su15043735

Chicago/Turabian Style

Ren, Wei, and Yaxiao Wang. 2023. "Study on the Factors Affecting the Green Housing Purchase Intention in Urban Residents—Taking the Beijing-Tianjin-Hebei Region as an Example" Sustainability 15, no. 4: 3735. https://doi.org/10.3390/su15043735

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop