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MentalManip: A Dataset For Fine-grained Analysis of Mental Manipulation in Conversations

26 May 2024
Yuxin Wang
Ivory Yang
Saeed Hassanpour
Soroush Vosoughi
    AAML
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Abstract

Mental manipulation, a significant form of abuse in interpersonal conversations, presents a challenge to identify due to its context-dependent and often subtle nature. The detection of manipulative language is essential for protecting potential victims, yet the field of Natural Language Processing (NLP) currently faces a scarcity of resources and research on this topic. Our study addresses this gap by introducing a new dataset, named MentalManip{\rm M{\small ental}M{\small anip}}MentalManip, which consists of 4,0004,0004,000 annotated movie dialogues. This dataset enables a comprehensive analysis of mental manipulation, pinpointing both the techniques utilized for manipulation and the vulnerabilities targeted in victims. Our research further explores the effectiveness of leading-edge models in recognizing manipulative dialogue and its components through a series of experiments with various configurations. The results demonstrate that these models inadequately identify and categorize manipulative content. Attempts to improve their performance by fine-tuning with existing datasets on mental health and toxicity have not overcome these limitations. We anticipate that MentalManip{\rm M{\small ental}M{\small anip}}MentalManip will stimulate further research, leading to progress in both understanding and mitigating the impact of mental manipulation in conversations.

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