Detecting Mental Manipulation in Speech via Synthetic Multi-Speaker Dialogue

arXiv — cs.CLWednesday, January 14, 2026 at 5:00:00 AM
  • A new study has introduced the SPEECHMENTALMANIP benchmark, marking the first exploration of mental manipulation detection in spoken dialogues, utilizing synthetic multi-speaker audio to enhance a text-based dataset. This research highlights the challenges of identifying manipulative speech tactics, revealing that models trained on audio exhibit lower recall compared to text.
  • The findings underscore the importance of accurately detecting mental manipulation in speech, which has implications for fields such as psychology, law, and AI ethics, where understanding the nuances of communication is crucial.
  • This development reflects a growing recognition of the complexities involved in speech analysis, paralleling advancements in related areas like emotionally expressive speech synthesis and speaker-role differentiation, which aim to enhance the understanding of human dialogue and its implications in various contexts.
— via World Pulse Now AI Editorial System

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