TL;DR
This paper introduces EvMine, an unsupervised framework for detecting key events in news corpora by leveraging peak phrase extraction, community detection, and iterative document retrieval, effectively bridging event understanding and structuring.
Contribution
The paper proposes a novel unsupervised approach for key event detection that does not require labeled data and effectively captures intermediate-level events in news articles.
Findings
EvMine outperforms baseline methods in experiments.
The framework effectively detects temporally relevant key events.
Community detection improves event feature set quality.
Abstract
Automated event detection from news corpora is a crucial task towards mining fast-evolving structured knowledge. As real-world events have different granularities, from the top-level themes to key events and then to event mentions corresponding to concrete actions, there are generally two lines of research: (1) theme detection identifies from a news corpus major themes (e.g., "2019 Hong Kong Protests" vs. "2020 U.S. Presidential Election") that have very distinct semantics; and (2) action extraction extracts from one document mention-level actions (e.g., "the police hit the left arm of the protester") that are too fine-grained for comprehending the event. In this paper, we propose a new task, key event detection at the intermediate level, aiming to detect from a news corpus key events (e.g., "HK Airport Protest on Aug. 12-14"), each happening at a particular time/location and focusing…
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