Real-time event detection from the Twitter data stream using the TwitterNews+ Framework

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摘要

Detecting events in real-time from the Twitter data stream has gained substantial attention in recent years from researchers around the world. Different event detection approaches have been proposed as a result of these research efforts. One of the major challenges faced in this context is the high computational cost associated with event detection in real-time. We propose, TwitterNews+, an event detection system that incorporates specialized inverted indices and an incremental clustering approach to provide a low computational cost solution to detect both major and minor newsworthy events in real-time from the Twitter data stream. In addition, we conduct an extensive parameter sensitivity analysis to fine-tune the parameters used in TwitterNews+ to achieve the best performance. Finally, we evaluate the effectiveness of our system using a publicly available corpus as a benchmark dataset. The results of the evaluation show a significant improvement in terms of recall and precision over five state-of-the-art baselines we have used.

论文关键词:Event detection,Incremental clustering,Social media,Microblog,Twitter,Parameter sensitivity analysis

论文评审过程:Author links open overlay panelMahmudHasanaEnvelopeMehmet A.OrgunPersonabEnvelopeRolfSchwitteraEnvelope

论文官网地址:https://doi.org/10.1016/j.ipm.2018.03.001