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Papers/User Preference-aware Fake News Detection

User Preference-aware Fake News Detection

Yingtong Dou, Kai Shu, Congying Xia, Philip S. Yu, Lichao Sun

2021-04-25MisinformationFact CheckingGraph ClassificationFake News Detection
PaperPDFCodeCode(official)

Abstract

Disinformation and fake news have posed detrimental effects on individuals and society in recent years, attracting broad attention to fake news detection. The majority of existing fake news detection algorithms focus on mining news content and/or the surrounding exogenous context for discovering deceptive signals; while the endogenous preference of a user when he/she decides to spread a piece of fake news or not is ignored. The confirmation bias theory has indicated that a user is more likely to spread a piece of fake news when it confirms his/her existing beliefs/preferences. Users' historical, social engagements such as posts provide rich information about users' preferences toward news and have great potential to advance fake news detection. However, the work on exploring user preference for fake news detection is somewhat limited. Therefore, in this paper, we study the novel problem of exploiting user preference for fake news detection. We propose a new framework, UPFD, which simultaneously captures various signals from user preferences by joint content and graph modeling. Experimental results on real-world datasets demonstrate the effectiveness of the proposed framework. We release our code and data as a benchmark for GNN-based fake news detection: https://github.com/safe-graph/GNN-FakeNews.

Results

TaskDatasetMetricValueModel
Graph ClassificationUPFD-GOSAccuracy (%)97.54UPFD-SAGE
Graph ClassificationUPFD-GOSAccuracy (%)96.52UPFD-GAT
Graph ClassificationUPFD-GOSAccuracy (%)96.11UPFD-GCNFN
Graph ClassificationUPFD-GOSAccuracy (%)95.9GCNFN
Graph ClassificationUPFD-GOSAccuracy (%)95.11UPFD-GCN
Graph ClassificationUPFD-GOSAccuracy (%)93.6GNNCL
Graph ClassificationUPFD-GOSAccuracy (%)91.27UPFD-BiGCN
Graph ClassificationUPFD-POLAccuracy (%)84.62UPFD-SAGE
Graph ClassificationUPFD-POLAccuracy (%)83.71GCNFN
Graph ClassificationUPFD-POLAccuracy (%)83.26UPFD-BiGCN
Graph ClassificationUPFD-POLAccuracy (%)82.81UPFD-GAT
Graph ClassificationUPFD-POLAccuracy (%)82.35UPFD-GCNFN
Graph ClassificationUPFD-POLAccuracy (%)81.9UPFD-GCN
Graph ClassificationUPFD-POLAccuracy (%)60.18GNNCL
ClassificationUPFD-GOSAccuracy (%)97.54UPFD-SAGE
ClassificationUPFD-GOSAccuracy (%)96.52UPFD-GAT
ClassificationUPFD-GOSAccuracy (%)96.11UPFD-GCNFN
ClassificationUPFD-GOSAccuracy (%)95.9GCNFN
ClassificationUPFD-GOSAccuracy (%)95.11UPFD-GCN
ClassificationUPFD-GOSAccuracy (%)93.6GNNCL
ClassificationUPFD-GOSAccuracy (%)91.27UPFD-BiGCN
ClassificationUPFD-POLAccuracy (%)84.62UPFD-SAGE
ClassificationUPFD-POLAccuracy (%)83.71GCNFN
ClassificationUPFD-POLAccuracy (%)83.26UPFD-BiGCN
ClassificationUPFD-POLAccuracy (%)82.81UPFD-GAT
ClassificationUPFD-POLAccuracy (%)82.35UPFD-GCNFN
ClassificationUPFD-POLAccuracy (%)81.9UPFD-GCN
ClassificationUPFD-POLAccuracy (%)60.18GNNCL

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