2021
DOI: 10.48550/arxiv.2104.11761
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Towards Trustworthy Deception Detection: Benchmarking Model Robustness across Domains, Modalities, and Languages

Maria Glenski,
Ellyn Ayton,
Robin Cosbey
et al.

Abstract: Evaluating model robustness is critical when developing trustworthy models not only to gain deeper understanding of model behavior, strengths, and weaknesses, but also to develop future models that are generalizable and robust across expected environments a model may encounter in deployment. In this paper we present a framework for measuring model robustness for an important but difficult text classification task -deceptive news detection. We evaluate model robustness to out-of-domain data, modality-specific f… Show more

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