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

02/04/2023
by   Deepak Kanneganti, et al.
0

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.

READ FULL TEXT
research
12/16/2020

Exploring Thematic Coherence in Fake News

The spread of fake news remains a serious global issue; understanding an...
research
11/13/2020

Cross-Domain Learning for Classifying Propaganda in Online Contents

As news and social media exhibit an increasing amount of manipulative po...
research
04/23/2021

Towards Trustworthy Deception Detection: Benchmarking Model Robustness across Domains, Modalities, and Languages

Evaluating model robustness is critical when developing trustworthy mode...
research
12/02/2021

Unity is Strength: A Formalization of Cross-Domain Maximal Extractable Value

The multi-chain future is upon us. Modular architectures are coming to m...
research
02/11/2021

Embracing Domain Differences in Fake News: Cross-domain Fake News Detection using Multi-modal Data

With the rapid evolution of social media, fake news has become a signifi...
research
11/30/2022

RAFT: Rationale adaptor for few-shot abusive language detection

Abusive language is a concerning problem in online social media. Past re...
research
09/09/2020

Comparative Study of Language Models on Cross-Domain Data with Model Agnostic Explainability

With the recent influx of bidirectional contextualized transformer langu...

Please sign up or login with your details

Forgot password? Click here to reset