Location Inference for Non-Geotagged Tweets in User Timelines [Extended Abstract]

2019 IEEE 35th International Conference on Data Engineering (ICDE)(2019)

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摘要
This study explores the problem of inferring locations for individual tweets. We scrutinize Twitter user timelines in a novel fashion. First of all, we split each user's tweet timeline temporally into a number of clusters, each tending to imply a distinct location. Subsequently, we adapt machine learning models to our setting and design classifiers that classify each tweet cluster into one of the pre-defined location classes at the city level. Extensive experiments on a large set of real Twitter data suggest that our models are effective at inferring locations for non-geotagged tweets and outperform the state-of-the-art approaches significantly in terms of inference accuracy.
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关键词
Twitter,Testing,Urban areas,Training,Data models,Convolution,Computational modeling
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