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Detecting Conversational Mental Manipulation with Intent-Aware Prompting

Intent-Aware Prompting (IAP) uses large language models to detect mental manipulation by identifying underlying participant intents, showing improved performance on the MentalManip dataset compared to existing methods.

Year
2024
Venue
arXiv 2024
Authors
7
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arxiv.org/abs/2412.08414ARXIV-DEFAULT
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Abstract

Mental manipulation severely undermines mental wellness by covertly and negatively distorting decision-making. While there is an increasing interest in mental health care within the natural language processing community, progress in tackling manipulation remains limited due to the complexity of detecting subtle, covert tactics in conversations. In this paper, we propose Intent-Aware Prompting (IAP), a novel approach for detecting mental manipulations using large language models (LLMs), providing a deeper understanding of manipulative tactics by capturing the underlying intents of participants. Experimental results on the MentalManip dataset demonstrate superior effectiveness of IAP against other advanced prompting strategies. Notably, our approach substantially reduces false negatives, helping detect more instances of mental manipulation with minimal misjudgment of positive cases. The code of this paper is available at https://github.com/Anton-Jiayuan-MA/Manip-IAP.

Authors

7