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Main Authors: Zhang, Yuxuan, Li, Yulong, Yu, Zichen, Tang, Feilong, Lu, Zhixiang, Li, Chong, Dang, Kang, Su, Jionglong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.00778
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author Zhang, Yuxuan
Li, Yulong
Yu, Zichen
Tang, Feilong
Lu, Zhixiang
Li, Chong
Dang, Kang
Su, Jionglong
author_facet Zhang, Yuxuan
Li, Yulong
Yu, Zichen
Tang, Feilong
Lu, Zhixiang
Li, Chong
Dang, Kang
Su, Jionglong
contents Long-sequence causal reasoning seeks to uncover causal relationships within extended time series data but is hindered by complex dependencies and the challenges of validating causal links. To address the limitations of large-scale language models (e.g., GPT-4) in capturing intricate emotional causality within extended dialogues, we propose CauseMotion, a long-sequence emotional causal reasoning framework grounded in Retrieval-Augmented Generation (RAG) and multimodal fusion. Unlike conventional methods relying only on textual information, CauseMotion enriches semantic representations by incorporating audio-derived features-vocal emotion, emotional intensity, and speech rate-into textual modalities. By integrating RAG with a sliding window mechanism, it effectively retrieves and leverages contextually relevant dialogue segments, thus enabling the inference of complex emotional causal chains spanning multiple conversational turns. To evaluate its effectiveness, we constructed the first benchmark dataset dedicated to long-sequence emotional causal reasoning, featuring dialogues with over 70 turns. Experimental results demonstrate that the proposed RAG-based multimodal integrated approach, the efficacy of substantially enhances both the depth of emotional understanding and the causal inference capabilities of large-scale language models. A GLM-4 integrated with CauseMotion achieves an 8.7% improvement in causal accuracy over the original model and surpasses GPT-4o by 1.2%. Additionally, on the publicly available DiaASQ dataset, CauseMotion-GLM-4 achieves state-of-the-art results in accuracy, F1 score, and causal reasoning accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2501_00778
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Decoding the Flow: CauseMotion for Emotional Causality Analysis in Long-form Conversations
Zhang, Yuxuan
Li, Yulong
Yu, Zichen
Tang, Feilong
Lu, Zhixiang
Li, Chong
Dang, Kang
Su, Jionglong
Computation and Language
Computers and Society
Long-sequence causal reasoning seeks to uncover causal relationships within extended time series data but is hindered by complex dependencies and the challenges of validating causal links. To address the limitations of large-scale language models (e.g., GPT-4) in capturing intricate emotional causality within extended dialogues, we propose CauseMotion, a long-sequence emotional causal reasoning framework grounded in Retrieval-Augmented Generation (RAG) and multimodal fusion. Unlike conventional methods relying only on textual information, CauseMotion enriches semantic representations by incorporating audio-derived features-vocal emotion, emotional intensity, and speech rate-into textual modalities. By integrating RAG with a sliding window mechanism, it effectively retrieves and leverages contextually relevant dialogue segments, thus enabling the inference of complex emotional causal chains spanning multiple conversational turns. To evaluate its effectiveness, we constructed the first benchmark dataset dedicated to long-sequence emotional causal reasoning, featuring dialogues with over 70 turns. Experimental results demonstrate that the proposed RAG-based multimodal integrated approach, the efficacy of substantially enhances both the depth of emotional understanding and the causal inference capabilities of large-scale language models. A GLM-4 integrated with CauseMotion achieves an 8.7% improvement in causal accuracy over the original model and surpasses GPT-4o by 1.2%. Additionally, on the publicly available DiaASQ dataset, CauseMotion-GLM-4 achieves state-of-the-art results in accuracy, F1 score, and causal reasoning accuracy.
title Decoding the Flow: CauseMotion for Emotional Causality Analysis in Long-form Conversations
topic Computation and Language
Computers and Society
url https://arxiv.org/abs/2501.00778