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Main Authors: Chen, Angela, Jin, Siwei, Wang, Canwen, Swartz, Holly, Wu, Tongshuang, Kraut, Robert E, Zhu, Haiyi
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.12450
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author Chen, Angela
Jin, Siwei
Wang, Canwen
Swartz, Holly
Wu, Tongshuang
Kraut, Robert E
Zhu, Haiyi
author_facet Chen, Angela
Jin, Siwei
Wang, Canwen
Swartz, Holly
Wu, Tongshuang
Kraut, Robert E
Zhu, Haiyi
contents Psychotherapy is a primary treatment for many mental health conditions, yet the interplay among therapist behaviors, client responses, and the therapeutic relationship remains difficult to untangle. This work advances a computational approach for modeling these moment-to-moment processes. We first developed automated methods using large language models (LLMs) to assess therapist behaviors (e.g., empathy, exploration), relational qualities (e.g., rapport), and client outcomes (e.g., disclosure, self-directed and outward-directed negative emotions). These measures showed strong alignment with human ratings (mean Pearson $r = .66$). We then analyzed nearly 2,000 hours of psychotherapy transcripts from the Alexander Street corpus using Structural Equation Modeling (SEM). SEM showed that therapist empathy and exploration directly shaped client disclosure and emotional expression, whereas rapport may contribute to reductions in internal emotional distress rather than increased willingness to express it. Together, these findings demonstrate how computational tools can capture core therapeutic processes at scale and offer new opportunities for understanding, modeling, and improving therapist training.
format Preprint
id arxiv_https___arxiv_org_abs_2602_12450
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Empirical Modeling of Therapist-Client Dynamics in Psychotherapy Using LLM-Based Assessments
Chen, Angela
Jin, Siwei
Wang, Canwen
Swartz, Holly
Wu, Tongshuang
Kraut, Robert E
Zhu, Haiyi
Computers and Society
Psychotherapy is a primary treatment for many mental health conditions, yet the interplay among therapist behaviors, client responses, and the therapeutic relationship remains difficult to untangle. This work advances a computational approach for modeling these moment-to-moment processes. We first developed automated methods using large language models (LLMs) to assess therapist behaviors (e.g., empathy, exploration), relational qualities (e.g., rapport), and client outcomes (e.g., disclosure, self-directed and outward-directed negative emotions). These measures showed strong alignment with human ratings (mean Pearson $r = .66$). We then analyzed nearly 2,000 hours of psychotherapy transcripts from the Alexander Street corpus using Structural Equation Modeling (SEM). SEM showed that therapist empathy and exploration directly shaped client disclosure and emotional expression, whereas rapport may contribute to reductions in internal emotional distress rather than increased willingness to express it. Together, these findings demonstrate how computational tools can capture core therapeutic processes at scale and offer new opportunities for understanding, modeling, and improving therapist training.
title Empirical Modeling of Therapist-Client Dynamics in Psychotherapy Using LLM-Based Assessments
topic Computers and Society
url https://arxiv.org/abs/2602.12450