Saved in:
Bibliographic Details
Main Authors: Harada, Rushia, Kimura, Yuken, Inoshita, Keito
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.11210
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915719490306048
author Harada, Rushia
Kimura, Yuken
Inoshita, Keito
author_facet Harada, Rushia
Kimura, Yuken
Inoshita, Keito
contents Well-being in family settings involves subtle psychological dynamics that conventional metrics often overlook. In particular, unconscious parental expectations, termed ideal parent bias, can suppress children's emotional expression and autonomy. This suppression, referred to as suppressed emotion, often stems from well-meaning but value-driven communication, which is difficult to detect or address from outside the family. Focusing on these latent dynamics, this study explores Large Language Model (LLM)-based support for psychologically safe family communication. We constructed a Japanese parent-child dialogue corpus of 30 scenarios, each annotated with metadata on ideal parent bias and suppressed emotion. Based on this corpus, we developed a Role-Playing LLM-based multi-agent dialogue support framework that analyzes dialogue and generates feedback. Specialized agents detect suppressed emotion, describe implicit ideal parent bias in parental speech, and infer contextual attributes such as the child's age and background. A meta-agent compiles these outputs into a structured report, which is then passed to five selected expert agents. These agents collaboratively generate empathetic and actionable feedback through a structured four-step discussion process. Experiments show that the system can detect categories of suppressed emotion with moderate accuracy and produce feedback rated highly in empathy and practicality. Moreover, simulated follow-up dialogues incorporating this feedback exhibited signs of improved emotional expression and mutual understanding, suggesting the framework's potential in supporting positive transformation in family interactions.
format Preprint
id arxiv_https___arxiv_org_abs_2507_11210
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Role-Playing LLM-Based Multi-Agent Support Framework for Detecting and Addressing Family Communication Bias
Harada, Rushia
Kimura, Yuken
Inoshita, Keito
Human-Computer Interaction
Artificial Intelligence
Well-being in family settings involves subtle psychological dynamics that conventional metrics often overlook. In particular, unconscious parental expectations, termed ideal parent bias, can suppress children's emotional expression and autonomy. This suppression, referred to as suppressed emotion, often stems from well-meaning but value-driven communication, which is difficult to detect or address from outside the family. Focusing on these latent dynamics, this study explores Large Language Model (LLM)-based support for psychologically safe family communication. We constructed a Japanese parent-child dialogue corpus of 30 scenarios, each annotated with metadata on ideal parent bias and suppressed emotion. Based on this corpus, we developed a Role-Playing LLM-based multi-agent dialogue support framework that analyzes dialogue and generates feedback. Specialized agents detect suppressed emotion, describe implicit ideal parent bias in parental speech, and infer contextual attributes such as the child's age and background. A meta-agent compiles these outputs into a structured report, which is then passed to five selected expert agents. These agents collaboratively generate empathetic and actionable feedback through a structured four-step discussion process. Experiments show that the system can detect categories of suppressed emotion with moderate accuracy and produce feedback rated highly in empathy and practicality. Moreover, simulated follow-up dialogues incorporating this feedback exhibited signs of improved emotional expression and mutual understanding, suggesting the framework's potential in supporting positive transformation in family interactions.
title Role-Playing LLM-Based Multi-Agent Support Framework for Detecting and Addressing Family Communication Bias
topic Human-Computer Interaction
Artificial Intelligence
url https://arxiv.org/abs/2507.11210