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Unsupervised Story Discovery from Continuous News Streams via Scalable Thematic Embedding (2304.04099v3)

Published 8 Apr 2023 in cs.IR, cs.CL, cs.DB, and cs.LG

Abstract: Unsupervised discovery of stories with correlated news articles in real-time helps people digest massive news streams without expensive human annotations. A common approach of the existing studies for unsupervised online story discovery is to represent news articles with symbolic- or graph-based embedding and incrementally cluster them into stories. Recent LLMs are expected to improve the embedding further, but a straightforward adoption of the models by indiscriminately encoding all information in articles is ineffective to deal with text-rich and evolving news streams. In this work, we propose a novel thematic embedding with an off-the-shelf pretrained sentence encoder to dynamically represent articles and stories by considering their shared temporal themes. To realize the idea for unsupervised online story discovery, a scalable framework USTORY is introduced with two main techniques, theme- and time-aware dynamic embedding and novelty-aware adaptive clustering, fueled by lightweight story summaries. A thorough evaluation with real news data sets demonstrates that USTORY achieves higher story discovery performances than baselines while being robust and scalable to various streaming settings.

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Authors (4)
  1. Susik Yoon (12 papers)
  2. Dongha Lee (63 papers)
  3. Yunyi Zhang (39 papers)
  4. Jiawei Han (263 papers)
Citations (5)