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Main Authors: Bai, Xin, Chen, Guanyi, He, Tingting, Zhou, Chenlian, Liu, Yu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.15316
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author Bai, Xin
Chen, Guanyi
He, Tingting
Zhou, Chenlian
Liu, Yu
author_facet Bai, Xin
Chen, Guanyi
He, Tingting
Zhou, Chenlian
Liu, Yu
contents Emotional Support Conversations (ESC) are crucial for providing empathy, validation, and actionable guidance to individuals in distress. However, existing definitions of the ESC task oversimplify the structure of supportive responses, typically modelling them as single strategy-utterance pairs. Through a detailed corpus analysis of the ESConv dataset, we identify a common yet previously overlooked phenomenon: emotional supporters often employ multiple strategies consecutively within a single turn. We formally redefine the ESC task to account for this, proposing a revised formulation that requires generating the full sequence of strategy-utterance pairs given a dialogue history. To facilitate this refined task, we introduce several modelling approaches, including supervised deep learning models and large language models. Our experiments show that, under this redefined task, state-of-the-art LLMs outperform both supervised models and human supporters. Notably, contrary to some earlier findings, we observe that LLMs frequently ask questions and provide suggestions, demonstrating more holistic support capabilities.
format Preprint
id arxiv_https___arxiv_org_abs_2505_15316
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Emotional Supporters often Use Multiple Strategies in a Single Turn
Bai, Xin
Chen, Guanyi
He, Tingting
Zhou, Chenlian
Liu, Yu
Computation and Language
Emotional Support Conversations (ESC) are crucial for providing empathy, validation, and actionable guidance to individuals in distress. However, existing definitions of the ESC task oversimplify the structure of supportive responses, typically modelling them as single strategy-utterance pairs. Through a detailed corpus analysis of the ESConv dataset, we identify a common yet previously overlooked phenomenon: emotional supporters often employ multiple strategies consecutively within a single turn. We formally redefine the ESC task to account for this, proposing a revised formulation that requires generating the full sequence of strategy-utterance pairs given a dialogue history. To facilitate this refined task, we introduce several modelling approaches, including supervised deep learning models and large language models. Our experiments show that, under this redefined task, state-of-the-art LLMs outperform both supervised models and human supporters. Notably, contrary to some earlier findings, we observe that LLMs frequently ask questions and provide suggestions, demonstrating more holistic support capabilities.
title Emotional Supporters often Use Multiple Strategies in a Single Turn
topic Computation and Language
url https://arxiv.org/abs/2505.15316