4.7 Article

Detecting Fake News With Weak Social Supervision

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IEEE INTELLIGENT SYSTEMS
卷 36, 期 4, 页码 96-103

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IEEE COMPUTER SOC
DOI: 10.1109/MIS.2020.2997781

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Limited labeled data pose a challenge for supervised learning systems, but weak supervision, especially weak social supervision from social media, can help mitigate this issue. This article demonstrates the effectiveness of weak social supervision, using fake news detection research as a case study, in tasks where annotated examples are scarce but social engagements are abundant. This opens up possibilities for utilizing weak social supervision in similar tasks with limited labeled data.
Limited labeled data are becoming one of the largest bottlenecks for supervised learning systems. This is especially the case for many real-world tasks, where large-scale labeled examples are either too expensive to acquire or unavailable due to privacy or data access constraints. Weak supervision has shown to be effective in mitigating the scarcity of labeled data by leveraging weak labels or injecting constraints from heuristic rules and/or extrinsic knowledge sources. Social media has little labeled data but possesses unique characteristics that make it suitable for generating weak supervision, resulting in a new type of weak supervision, i.e., weak social supervision. In this article, we illustrate how various aspects of social media can be used as weak social supervision. Specifically, we use the recent research on fake news detection as the use case, where social engagements are abundant but annotated examples are scarce, to show that weak social supervision is effective when facing the labeled data scarcity problem. This article opens the door to learning with weak social supervision for similar emerging tasks when labeled data are limited.

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