CLJan 13, 2025

When lies are mostly truthful: automated verbal deception detection for embedded lies

arXiv:2501.07217v11 citationsh-index: 1Sci Rep
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of more realistic deception detection for applications like security or psychology, though it is incremental as it builds on existing methods with new data.

The researchers tackled the problem of detecting embedded lies within mostly truthful statements by creating a novel dataset of 2,088 statements and fine-tuning a language model, achieving 64% accuracy in classification.

Background: Verbal deception detection research relies on narratives and commonly assumes statements as truthful or deceptive. A more realistic perspective acknowledges that the veracity of statements exists on a continuum with truthful and deceptive parts being embedded within the same statement. However, research on embedded lies has been lagging behind. Methods: We collected a novel dataset of 2,088 truthful and deceptive statements with annotated embedded lies. Using a within-subjects design, participants provided a truthful account of an autobiographical event. They then rewrote their statement in a deceptive manner by including embedded lies, which they highlighted afterwards and judged on lie centrality, deceptiveness, and source. Results: We show that a fined-tuned language model (Llama-3-8B) can classify truthful statements and those containing embedded lies with 64% accuracy. Individual differences, linguistic properties and explainability analysis suggest that the challenge of moving the dial towards embedded lies stems from their resemblance to truthful statements. Typical deceptive statements consisted of 2/3 truthful information and 1/3 embedded lies, largely derived from past personal experiences and with minimal linguistic differences with their truthful counterparts. Conclusion: We present this dataset as a novel resource to address this challenge and foster research on embedded lies in verbal deception detection.

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