Incremental Learning for Fake News Detection

Authors

  • Renato M. Silva Department of Computer Engineering, Facens University
  • Pedro R. Pires Department of Computer Science, Federal University of São Carlos (UFSCar)
  • Tiago A. Almeida Department of Computer Science, Federal University of São Carlos (UFSCar)

DOI:

https://doi.org/10.5753/jidm.2022.2542

Keywords:

fake news, online learning, text categorization, machine learning

Abstract

Fake news is a concern that has impacted people’s lives for a long time. However, this problem has worsened deeply with the increase of social media popularity, which became a fertile ground to spread fast and affect humanity’s social, political, and economic future. Despite several studies on fake news detection, some critical gaps still need to be addressed. One of them is that most studies are unrealistic since they use machine learning with offline learning models. The language used in communication change continuously, reflecting society’s nature. Therefore, as facts covered by the news are dynamic, the static models learned by offline learning methods can quickly become obsolete. This study evaluates fake news detection using the online learning paradigm, which is best suited for dynamic problems whose underlying data distribution can change over time. We have addressed how automatic fake news classification suffers from concept drifting. For this, we have applied state-of-the-art methods that can learn incrementally to classify documents covering two historical events: the United States presidential election and the coronavirus disease (Covid-19) pandemic. We also evaluated three different types of feedback (uncertain, delayed, and immediate) and two training strategies: (i) updating the model only when it makes a prediction error and (ii) updating it after both error or success. The results obtained by our carefully designed experiments indicated that the performance of online learning models improved over time, while offline models did not sustain their performance.

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Published

2023-01-17

How to Cite

M. Silva, R., R. Pires, P., & Almeida, T. A. (2023). Incremental Learning for Fake News Detection. Journal of Information and Data Management, 13(6). https://doi.org/10.5753/jidm.2022.2542

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Section

KDMiLe 2021