CLAug 13, 2025

A Survey of Cognitive Distortion Detection and Classification in NLP

arXiv:2508.09878v22 citationsh-index: 27EMNLP
Originality Synthesis-oriented
AI Analysis

It addresses inconsistencies in computational mental health research for practitioners and researchers, though it is incremental as a review.

This survey tackles the fragmentation in cognitive distortion detection and classification in NLP by reviewing 38 studies over two decades, providing a consolidated taxonomy and resources to improve research coherence and reproducibility.

As interest grows in applying natural language processing (NLP) techniques to mental health, an expanding body of work explores the automatic detection and classification of cognitive distortions (CDs). CDs are habitual patterns of negatively biased or flawed thinking that distort how people perceive events, judge themselves, and react to the world. Identifying and addressing them is a central goal of therapy. Despite this momentum, the field remains fragmented, with inconsistencies in CD taxonomies, task formulations, and evaluation practices limiting comparability across studies. This survey presents the first comprehensive review of 38 studies spanning two decades, mapping how CDs have been implemented in computational research and evaluating the methods applied. We provide a consolidated CD taxonomy reference, summarise common task setups, and highlight persistent challenges to support more coherent and reproducible research. Alongside our review, we introduce practical resources, including curated evaluation metrics from surveyed papers, a standardised datasheet template, and an ethics flowchart, available online.

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