Papers by Ambreen Nazir

2 papers
DTCA: Decision Tree-based Co-Attention Networks for Explainable Claim Verification (2020.acl-main)

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Challenge: Recent methods to discover evidence for explainable claim verification are nontransparent and unexplained.
Approach: They propose a Decision Tree-based Co-Attention model to discover evidence for explainable claim verification using neural networks.
Outcome: The proposed model boosts the F1-score by more than 3.11%, 2.41% on two public datasets.
Different Absorption from the Same Sharing: Sifted Multi-task Learning for Fake News Detection (D19-1)

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Challenge: Existing methods for detecting fake news use shared features as complementarity features without selection.
Approach: They propose a sifted multi-task learning method with a selected sharing layer for fake news detection.
Outcome: The proposed method boosts the F1-score by more than 0.87%, 1.31% on two public and widely used competition datasets.

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