Zhaoming Chen
2026
You Never Know a Person, You Only Know Their Defenses: Detecting Levels of Psychological Defense Mechanisms in Supportive Conversations
Hongbin Na | Zimu Wang | Zhaoming Chen | Peilin Zhou | Yining Hua | Grace Ziqi Zhou | Haiyang Zhang | Tao Shen | Wei Wang | John Torous | Shaoxiong Ji | Ling Chen
Findings of the Association for Computational Linguistics: ACL 2026
Hongbin Na | Zimu Wang | Zhaoming Chen | Peilin Zhou | Yining Hua | Grace Ziqi Zhou | Haiyang Zhang | Tao Shen | Wei Wang | John Torous | Shaoxiong Ji | Ling Chen
Findings of the Association for Computational Linguistics: ACL 2026
Psychological defenses are strategies, often automatic, that people use to manage distress. Rigid use or overuse of defenses is negatively linked to mental health and shapes what speakers disclose and how they accept or resist help. However, defenses are complex and difficult to reliably measure, particularly in clinical dialogues. We introduce PsyDefConv, a dialogue corpus with help seeker utterances labeled for defense level, and DMRS Co-Pilot, a four-stage pipeline that provides evidence-based pre-annotations. The corpus contains 200 dialogues and 4,709 utterances, including 2,336 help seeker turns, with double-blind labeling reaching Cohen’s kappa of 0.639. In a counterbalanced study, the co-pilot reduced average annotation time by 24.0%. In expert review, it averaged 4.62 for evidence supportiveness, 4.44 for clinical plausibility, and 4.40 for insight on a seven-point scale. Benchmarks with strong large language models (LLMs) in zero-shot and fine-tuning settings demonstrate clear headroom, with the best macro F1-score around 30% and a tendency to overpredict mature defenses. Corpus analyses confirm that mature defenses are most common and reveal emotion-specific deviations. We release the corpus, annotations, code, and prompts to support research on defensive functioning in language.
RECAP: Resistance Capture in Text-based Mental Health Counseling with Large Language Models
Anqi Li | Yuqian Chen | Yu Lu | Zhaoming Chen | Yi Zhu | Yuan Xie | Zhenzhong Lan
Proceedings of the 30th Conference on Computational Natural Language Learning
Anqi Li | Yuqian Chen | Yu Lu | Zhaoming Chen | Yi Zhu | Yuan Xie | Zhenzhong Lan
Proceedings of the 30th Conference on Computational Natural Language Learning
Recognizing and navigating client resistance is critical for effective mental health counseling, yet its detection remains particularly challenging in text-based interactions. Existing NLP approaches oversimplify resistance categories, ignore the sequential dynamics of therapeutic interventions, and offer limited interpretability. To address these limitations, we propose PsyFIRE, a theoretically grounded framework capturing 13 fine-grained resistance behaviors alongside collaborative interactions. Based on PsyFIRE, we construct the ClientResistance corpus with 23,930 annotated utterances from real-world Chinese text-based counseling, each supported by context-specific rationales. Leveraging this dataset, we develop RECAP, a two-stage framework that detects resistance and fine-grained resistance types with explanations. RECAP achieves 91.25% F1 for distinguishing collaboration and resistance and 66.58% macro-F1 for fine-grained resistance categories classification, outperforming leading prompt-based LLM baselines by over 20 points. Expert evaluations confirm that the generated explanations are highly faithful and reliable. Applied to a separate counseling dataset and a pilot study with 62 counselors, RECAP reveals the prevalence of resistance, its negative impact on therapeutic relationships, and its potential to improve counselors’ understanding and intervention strategies.
Overview of the PsyDefDetect Shared Task at BioNLP 2026: Detecting Levels of Psychological Defense Mechanisms in Supportive Conversations
Hongbin Na | Zimu Wang | Zhaoming Chen | Yining Hua | Rena Gao | Kailai Yang | Ling Chen | Wei Wang | Shaoxiong Ji | John Torous | Sophia Ananiadou
BioNLP 2026
Hongbin Na | Zimu Wang | Zhaoming Chen | Yining Hua | Rena Gao | Kailai Yang | Ling Chen | Wei Wang | Shaoxiong Ji | John Torous | Sophia Ananiadou
BioNLP 2026
We present an overview of PsyDefDetect, the shared task on detecting levels of psychological defense mechanisms in emotional support dialogues, co-located with BioNLP@ACL 2026. Grounded in the clinically validated Defense Mechanism Rating Scales (DMRS) framework, the task asks systems to classify a target seeker utterance, given its preceding dialogue context, into one of nine categories: seven hierarchical DMRS levels plus two auxiliary labels. Participants worked on PsyDefConv, a newly released corpus of 200 dialogues and 2336 help-seeker utterances annotated under DMRS with substantial inter-annotator agreement. The task attracted 172 participants on CodaBench who produced 563 submissions, with 21 teams officially registering their results for the final ranking. The best system achieved a macro F1-score of 0.420, surpassing the strongest fine-tuned baseline reported in the dataset paper by a notable margin, yet leaving clear headroom. Our analysis highlights (i) a persistent tendency to over-predict the majority High-Adaptive class, (ii) a widening gap between accuracy and macro-F1 that reveals class-imbalance sensitivity, and (iii) the value of theory-aware and LLM-based approaches for fine-grained defensive-function classification. We release all task materials and invite the community to continue work on this novel intersection of clinical psychology and NLP.