PsyDefDetect invites researchers to tackle a novel challenge at the 
intersection of Clinical Psychology and Natural Language Processing: detecting 
and classifying psychological defense mechanisms in emotional support dialogues.

Grounded in the clinically validated Defense Mechanism Rating Scales (DMRS) 
framework, this shared task aims to advance the understanding of unconscious 
defensive functioning in text.

Shared task website: https://psydefdetect-shared-task.github.io/
Discord server: https://discord.com/invite/AhuspeXNkM
Google group: https://groups.google.com/g/psydefdetect
RedNote: https://xhslink.com/m/34ddMoz7E4L
Evaluation Platform (Codabench): https://www.codabench.org/competitions/12124/

Task Overview

Psychological defenses are the “immune system” of the mind, shaping what 
speakers disclose and how they accept or resist help. Despite their critical 
role in mental health and counseling, defensive functioning remains largely 
unmodeled in current emotional support conversation systems.

This shared task invites participants to bridge the gap between clinical theory 
and NLP by analyzing the PSYDEFCONV dataset. Participants will work with 
multi-turn dialogues to identify the specific defense level of a target 
utterance given its context. The goal is to develop models that can recognize 
subtle, context-dependent defensive maneuvers—ranging from adaptive coping to 
immature distortion.

Data and Labels

PSYDEFCONV is the first conversational dataset annotated with defense levels 
based on the DMRS. The dataset is constructed from a stratified subset of the 
ESConv corpus to ensure diverse coverage of problem types and emotions. The 
corpus contains 200 dialogues and 4,709 total utterances, including 2,336 
help-seeker turns annotated for defense levels.

Participants must classify utterances into 9 categories, comprising seven 
hierarchical levels of defensive maturity and two auxiliary labels.

Key Challenge

Capturing subtle linguistic cues of deep-seated psychological mechanisms within 
highly informal and context-dependent emotional dialogues.

Timeline

This preliminary timeline is subject to change. Follow our website and channels 
for updates.

Dec 15 2025: Task announced.
Dec 20 2025: Task Launch on CodaBench.
Mar 15 2026: Start of evaluation period.
Apr 05 2026: End of evaluation period.
TBA: Paper submission.
TBA: Author notifications.
TBA: Camera ready due.

Baseline and Evaluation Metrics

Baseline runs and official metrics are published on our CodaBench Page 
(https://www.codabench.org/competitions/12124/)

Organizers

Hongbin Na, University of Technology Sydney
Zimu Wang, Xi’an Jiaotong-Liverpool University
Zhaoming Chen, University of Utah
Yining Hua, Harvard University
Rena Gao, The University of Melbourne
Kailai Yang, The University of Manchester
Ling Chen, University of Technology Sydney
Wei Wang, Xi’an Jiaotong-Liverpool University
Shaoxiong Ji, ELLIS Institute Finland & University of Turku
John Torous, Harvard University
Sophia Ananiadou, The University of Manchester & ELLIS Manchester
--

Paul Thompson
Research Fellow
Department of Computer Science
National Centre for Text Mining
Manchester Institute of Biotechnology
University of Manchester
131 Princess Street
Manchester
M1 7DN
UK
http://personalpages.manchester.ac.uk/staff/Paul.Thompson/





_______________________________________________
Corpora mailing list -- [email protected]
https://list.elra.info/mailman3/postorius/lists/corpora.list.elra.info/
To unsubscribe send an email to [email protected]

Reply via email to