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Decision Support for the Automotive Industry

Forecasting Residual Values Using Artificial Neural Networks

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Abstract

In the automotive industry, it is very common for new vehicles to be leased rather than sold. This implies forecasting an accurate residual value for the vehicles, which is a major factor for determining monthly leasing rates. Either a systematic overestimation or underestimation of future residual values can incur large potential losses in resale value or, respectively, competitive disadvantages. For the purpose of facilitating residual value related management decisions, an operative decision support system is introduced with emphasis on its forecasting capabilities. In the paper, the use of artificial neural networks for this application is demonstrated in a case study based on more than 250,000 data sets of leasing contracts from a major German car manufacturer, completed between 2011 and 2017. The importance of determining price factors and the effect of different time horizons on forecasting accuracy are investigated and practical implications are discussed. In addition, the authors neither found a significant explanatory nor predictive power of external economic factors, which underlines the importance of collecting and taking advantage of vehicle-specific data or, in more general terms, the exclusive data of corporations, which is often only available internally.

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References

  • Adya M, Collopy F (1998) How effective are neural networks at forecasting and prediction? A review and evaluation. J Forecast 17(5–6):481–495

    Article  Google Scholar 

  • Bishop CM (1995) Neural networks for pattern recognition. Oxford University Press, Oxford

    Google Scholar 

  • Breiman L (2001) Random forests. Mach Learn 45(1):5–32

    Article  Google Scholar 

  • Cleveland RB, Cleveland WS, Terpenning I (1990) STL: a seasonal-trend decomposition procedure based on loess. J Off Stat 6(1):3–73

    Google Scholar 

  • Domingos P (2012) A few useful things to know about machine learning. Commun ACM 55(10):78–87

    Article  Google Scholar 

  • Eilers D, Dunis CL, von Mettenheim H-J, Breitner MH (2014) Intelligent trading of seasonal effects: a decision support algorithm based on reinforcement learning. Decis Support Syst 64:100–108

    Article  Google Scholar 

  • Fan H, AbouRizk S, Kim H, Zaïane O (2008) Assessing residual value of heavy construction equipment using predictive data mining model. J Comput Civ Eng 22(3):181–191

    Article  Google Scholar 

  • Gleue C, Eilers D, von Mettenheim H-J, Breitner MH (2017) Decision support for the automotive industry: forecasting residual values using artificial neural networks. In: WI 2017 proceedings

  • DAT Group (2016) DAT report 2016. https://www.dat.de/report. Accessed 16 July 2016

  • Ionescu L, Gwiggner C, Kliewer N (2016) Data analysis of delays in airline networks. Bus Inf Syst Eng 58(2):119–133

    Article  Google Scholar 

  • Köpp C, von Mettenheim H-J, Breitner MH (2014) Decision analytics with heatmap visualization for multi-step ensemble data. Bus Inf Syst Eng 6(3):131–140

    Article  Google Scholar 

  • Kuo RJ, Chen CH, Hwang YC (2001) An intelligent stock trading decision support system through integration of genetic algorithm based fuzzy neural network and artificial neural network. Fuzzy Sets Syst 118(1):21–45

    Article  Google Scholar 

  • Leaseurope (2014) Leasing key facts and figures. http://www.leaseurope.org. Accessed 19 July 2016

  • Lessmann S (2013) Modelling mismatch in predictive analytics: a case study illustration and possible remedy. In: ECIS 2013 proceedings

  • Lessmann S, Listiani M, Voß S (2010) Decision support in car leasing: a forecasting model for residual value estimation. In: ICIS 2010 proceedings

  • Lian C, Zhao D, Cheng J (2003) A fuzzy logic based evolutionary neural network for automotive residual value forecast. In: ITRE, pp 545–548

  • von Mettenheim H-J, Breitner MH (2010) Robust decision support systems with matrix forecasts and shared layer perceptrons for finance and other applications. In: ICIS 2010 proceedings

  • Nelson M, Hill T, Remus W, O’Connor M (1999) Time series forecasting using neural networks: should the data be deseasonalized first? J Forecast 18(5):359–367

    Article  Google Scholar 

  • Prado SM (2009) The European used-car market at a glance: Hedonic resale price valuation in automotive leasing industry. Econ Bull 29(3):2086–2099

    Google Scholar 

  • Prado SM, Ananth R (2012) Breaking through risk management, a derivative for the leasing industry. J Financ Transform 34:211–218

    Google Scholar 

  • Rode DC, Fischbeck PS, Dean SR (2002) Residual risk and the valuation of leases under uncertainty and limited information. J Struct Proj Finance 7(4):37–49

    Article  Google Scholar 

  • Schocken S, Ariav G (1994) Neural networks for decision support: problems and opportunities. Decis Support Syst 11(5):393–414

    Article  Google Scholar 

  • Sermpinis G, Stasinakis C, Dunis C (2014) Stochastic and genetic neural network combinations in trading and hybrid time-varying leverage effects. J Int Financ Mark Inst Money 30:21–54

    Article  Google Scholar 

  • Smith LD, Jin B (2007) Modeling exposure to losses on automobile leases. Rev Quant Finance Account 29(3):241–266

    Article  Google Scholar 

  • Spreckelsen C, von Mettenheim H-J, Breitner MH (2014) Real-time pricing and hedging of options on currency futures with artificial neural networks. J Forecast 33(6):419–432

    Article  Google Scholar 

  • Storchmann K (2004) On the depreciation of automobiles: an international comparison. Transportation 31(4):371–408

    Article  Google Scholar 

  • Wu J-D, Hsu C-C, Chen H-C (2009) An expert system of price forecasting for used cars using adaptive neuro-fuzzy inference. Expert Syst Appl 36(4):7809–7817

    Article  Google Scholar 

  • Zhang G, Patuwo BE, Hu MY (1998) Forecasting with artificial neural networks: the state of the art. Int J Forecast 14(1):35–62

    Article  Google Scholar 

  • Zimmermann H-G, Neuneier R, Grothmann R (2001) Multi-agent modeling of multiple FX-markets by neural networks. IEEE Trans Neural Netw 12(4):735–743

    Article  Google Scholar 

Download references

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Correspondence to Christoph Gleue.

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Accepted after two revisions by Prof. Dr. Suhl.

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Gleue, C., Eilers, D., von Mettenheim, HJ. et al. Decision Support for the Automotive Industry. Bus Inf Syst Eng 61, 385–397 (2019). https://doi.org/10.1007/s12599-018-0527-3

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