DecepGPT: Schema-Driven Deception Detection with Multicultural Datasets and Robust Multimodal Learning
Jiajian Huang, Dongliang Zhu, Zitong YU, Hui Ma, Jiayu Zhang, Chunmei Zhu, Xiaochun Cao

TL;DR
DecepGPT introduces a schema-driven approach with multicultural datasets and robust multimodal learning modules to improve deception detection accuracy, interpretability, and cross-cultural generalization.
Contribution
The paper presents a new multicultural deception dataset, reasoning-augmented benchmarks, and two novel modules for robust multimodal deception detection under small-data conditions.
Findings
Achieved state-of-the-art performance on multiple benchmarks.
Demonstrated improved cross-domain and cross-cultural generalization.
Provided auditable reasoning reports for deception detection.
Abstract
Multimodal deception detection aims to identify deceptive behavior by analyzing audiovisual cues for forensics and security. In these high-stakes settings, investigators need verifiable evidence connecting audiovisual cues to final decisions, along with reliable generalization across domains and cultural contexts. However, existing benchmarks provide only binary labels without intermediate reasoning cues. Datasets are also small with limited scenario coverage, leading to shortcut learning. We address these issues through three contributions. First, we construct reasoning datasets by augmenting existing benchmarks with structured cue-level descriptions and reasoning chains, enabling model output auditable reports. Second, we release T4-Deception, a multicultural dataset based on the unified ``To Tell The Truth'' television format implemented across four countries. With 1695 samples, it…
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