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arxiv: 2302.02122 · v1 · pith:BDJUK7IQ · submitted 2023-02-04 · cs.CL · cs.AI

A New cross-domain strategy based XAI models for fake news detection

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classification cs.CL cs.AI
keywords cross-domainmodelsclassificationdetectiondifferentdomainfakelevels
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In this study, we presented a four-level cross-domain strategy for fake news detection on pre-trained models. Cross-domain text classification is a task of a model adopting a target domain by using the knowledge of the source domain. Explainability is crucial in understanding the behaviour of these complex models. A fine-tune BERT model is used to. perform cross-domain classification with several experiments using datasets from different domains. Explanatory models like Anchor, ELI5, LIME and SHAP are used to design a novel explainable approach to cross-domain levels. The experimental analysis has given an ideal pair of XAI models on different levels of cross-domain.

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