SILGMay 30, 2023

FakeSwarm: Improving Fake News Detection with Swarming Characteristics

arXiv:2305.19194v14 citations
Originality Incremental advance
AI Analysis

This addresses the societal problem of fake news misinformation, offering a novel approach that is incremental in combining swarm features with existing methods.

The paper tackled fake news detection by leveraging swarming characteristics, achieving over 97% f1-score and accuracy on a public dataset and improving recall in cases with early emerging fake news and limited text samples.

The proliferation of fake news poses a serious threat to society, as it can misinform and manipulate the public, erode trust in institutions, and undermine democratic processes. To address this issue, we present FakeSwarm, a fake news identification system that leverages the swarming characteristics of fake news. To extract the swarm behavior, we propose a novel concept of fake news swarming characteristics and design three types of swarm features, including principal component analysis, metric representation, and position encoding. We evaluate our system on a public dataset and demonstrate the effectiveness of incorporating swarm features in fake news identification, achieving an f1-score and accuracy of over 97% by combining all three types of swarm features. Furthermore, we design an online learning pipeline based on the hypothesis of the temporal distribution pattern of fake news emergence, validated on a topic with early emerging fake news and a shortage of text samples, showing that swarm features can significantly improve recall rates in such cases. Our work provides a new perspective and approach to fake news detection and highlights the importance of considering swarming characteristics in detecting fake news.

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