Computer Science > Computation and Language
[Submitted on 1 Oct 2023 (v1), last revised 13 Aug 2024 (this version, v2)]
Title:A Novel Computational and Modeling Foundation for Automatic Coherence Assessment
View PDF HTML (experimental)Abstract:Coherence is an essential property of well-written texts, that refers to the way textual units relate to one another. In the era of generative AI, coherence assessment is essential for many NLP tasks; summarization, generation, long-form question-answering, and more. However, in NLP {coherence} is an ill-defined notion, not having a formal definition or evaluation metrics, that would allow for large-scale automatic and systematic coherence assessment. To bridge this gap, in this work we employ the formal linguistic definition of \citet{Reinhart:1980} of what makes a discourse coherent, consisting of three conditions -- {\em cohesion, consistency} and {\em relevance} -- and formalize these conditions as respective computational tasks. We hypothesize that (i) a model trained on all of these tasks will learn the features required for coherence detection, and that (ii) a joint model for all tasks will exceed the performance of models trained on each task individually. On two benchmarks for coherence scoring rated by humans, one containing 500 automatically-generated short stories and another containing 4k real-world texts, our experiments confirm that jointly training on the proposed tasks leads to better performance on each task compared with task-specific models, and to better performance on assessing coherence overall, compared with strong baselines. We conclude that the formal and computational setup of coherence as proposed here provides a solid foundation for advanced methods of large-scale automatic assessment of coherence.
Submission history
From: Aviya Maimon [view email][v1] Sun, 1 Oct 2023 07:06:17 UTC (1,778 KB)
[v2] Tue, 13 Aug 2024 13:19:29 UTC (6,176 KB)
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