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Uncertainty-Guided Boundary Learning for Imbalanced Social Event Detection

  • Jiaqian Ren
  • , Hao Peng*
  • , Lei Jiang
  • , Zhiwei Liu
  • , Jia Wu
  • , Zhengtao Yu
  • , Philip S. Yu
  • *Corresponding author for this work
  • CAS - Institute of Information Engineering
  • University of Chinese Academy of Sciences
  • Salesforce AI Research
  • Macquarie University
  • Kunming University of Science and Technology
  • University of Illinois at Chicago

Research output: Contribution to journalArticlepeer-review

Abstract

Real-world social events typically exhibit a severe class-imbalance distribution, which makes the trained detection model encounter a serious generalization challenge. Most studies solve this problem from the frequency perspective and emphasize the representation or classifier learning for tail classes. While in our observation, compared to the rarity of classes, the calibrated uncertainty estimated from well-trained evidential deep learning networks better reflects model performance. To this end, we propose a novel uncertainty-guided class imbalance learning framework - UCLSED, and its variant—UCL-ECSED, for imbalanced social event detection tasks. We aim to improve the overall model performance by enhancing model generalization to those uncertain classes. Considering performance degradation usually comes from misclassifying samples as their confusing neighboring classes, we focus on boundary learning in latent space and classifier learning with high-quality uncertainty estimation. First, we design a novel uncertainty-guided contrastive learning loss, namely UCL and its variant - UCL-EC, to manipulate distinguishable representation distribution for imbalanced data. During training, they force all classes, especially uncertain ones, to adaptively adjust a clear separable boundary in the feature space. Second, to obtain more robust and accurate class uncertainty, we combine the results of multi-view evidential classifiers via the Dempster-Shafer theory under the supervision of an additional calibration method. We conduct experiments on three severely imbalanced social event datasets including Events2012_100, Events2018_100, and CrisisLexT_7. Our model significantly improves social event representation and classification tasks in almost all classes, especially those uncertain ones.

Original languageEnglish
Pages (from-to)2701-2715
Number of pages15
JournalIEEE Transactions on Knowledge and Data Engineering
Volume36
Issue number6
DOIs
StatePublished - 1 Jun 2024

Keywords

  • Social event detection
  • demperster-shafer theory
  • evidential deep learning
  • imbalanced data

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