Topical event detection on Twitter

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Titel: Topical event detection on Twitter
Autoren: Lishan Cui, Xiuzhen Zhang, Xiangmin Zhou, Flora Salim
Publikationsjahr: 2016
Schlagwörter: Database systems, Burst detection, Dynamic topic modelling, Event detection, Topic mutation
Beschreibung: Event detection on Twitter has attracted active research. Although existing work considers the semantic topic structure of documents for event detection, the topic dynamics and the semantic consistency are under-investigated. In this paper, we study the problem of topical event detection in tweet streams. We define topical events as the bursty occurrences of semantically consistent topics. We decompose the problem of topical event detection into two components: (1) We address the issue of the semantic incoherence of the evolution of topics. We propose to improve topic modelling to filter out semantically inconsistent dynamic topics. (2) We propose to perform burst detection on the time series of dynamic topics to detect bursty occurrences. We apply our proposed techniques to the real world application by detecting topical events in public transport tweets. Experiments demonstrate that our approach can detect the newsworthy events with high success rate.
Publikationsart: conference object
Sprache: unknown
Relation: 10779/rmit.27384603.v1; https://figshare.com/articles/conference_contribution/Topical_event_detection_on_Twitter/27384603
Verfügbarkeit: https://figshare.com/articles/conference_contribution/Topical_event_detection_on_Twitter/27384603
Rights: All rights reserved
Dokumentencode: edsbas.AC64FB7C
Datenbank: BASE
Beschreibung
Abstract:Event detection on Twitter has attracted active research. Although existing work considers the semantic topic structure of documents for event detection, the topic dynamics and the semantic consistency are under-investigated. In this paper, we study the problem of topical event detection in tweet streams. We define topical events as the bursty occurrences of semantically consistent topics. We decompose the problem of topical event detection into two components: (1) We address the issue of the semantic incoherence of the evolution of topics. We propose to improve topic modelling to filter out semantically inconsistent dynamic topics. (2) We propose to perform burst detection on the time series of dynamic topics to detect bursty occurrences. We apply our proposed techniques to the real world application by detecting topical events in public transport tweets. Experiments demonstrate that our approach can detect the newsworthy events with high success rate.