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Main Authors: Lee, Jihyun, Min, Yejin, Jeon, Yejin, Yang, SungJun, Kim, Hyounghun, Lee, Gary Geunbae
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.04448
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author Lee, Jihyun
Min, Yejin
Jeon, Yejin
Yang, SungJun
Kim, Hyounghun
Lee, Gary Geunbae
author_facet Lee, Jihyun
Min, Yejin
Jeon, Yejin
Yang, SungJun
Kim, Hyounghun
Lee, Gary Geunbae
contents Cognitive Behavioral Therapy (CBT) aims to identify and restructure automatic negative thoughts pertaining to involuntary interpretations of events, yet existing counseling agents struggle to identify and address them in dialogue settings. To bridge this gap, we introduce STEP, a dataset that models CBT counseling by explicitly reflecting automatic thoughts alongside dynamic, action-level counseling sequences. Using this dataset, we train STEPPER, a counseling agent that proactively elicits automatic thoughts and executes cognitively grounded interventions. To further enhance both decision accuracy and empathic responsiveness, we refine STEPPER through preference learning based on simulated, synthesized counseling sessions. Extensive CBT-aligned evaluations show that STEPPER delivers more clinically grounded, coherent, and personalized counseling compared to other strong baseline models, and achieves higher counselor competence without inducing emotional disruption.
format Preprint
id arxiv_https___arxiv_org_abs_2604_04448
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle PSY-STEP: Structuring Therapeutic Targets and Action Sequences for Proactive Counseling Dialogue Systems
Lee, Jihyun
Min, Yejin
Jeon, Yejin
Yang, SungJun
Kim, Hyounghun
Lee, Gary Geunbae
Artificial Intelligence
Cognitive Behavioral Therapy (CBT) aims to identify and restructure automatic negative thoughts pertaining to involuntary interpretations of events, yet existing counseling agents struggle to identify and address them in dialogue settings. To bridge this gap, we introduce STEP, a dataset that models CBT counseling by explicitly reflecting automatic thoughts alongside dynamic, action-level counseling sequences. Using this dataset, we train STEPPER, a counseling agent that proactively elicits automatic thoughts and executes cognitively grounded interventions. To further enhance both decision accuracy and empathic responsiveness, we refine STEPPER through preference learning based on simulated, synthesized counseling sessions. Extensive CBT-aligned evaluations show that STEPPER delivers more clinically grounded, coherent, and personalized counseling compared to other strong baseline models, and achieves higher counselor competence without inducing emotional disruption.
title PSY-STEP: Structuring Therapeutic Targets and Action Sequences for Proactive Counseling Dialogue Systems
topic Artificial Intelligence
url https://arxiv.org/abs/2604.04448