Location-Aware Top-k Term Publish/Subscribe

2018 IEEE 34th International Conference on Data Engineering (ICDE)(2018)

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摘要
Massive amount of data that contain spatial, textual, and temporal information are being generated at a high scale. These spatio-temporal documents cover a wide range of topics in local area. Users are interested in receiving local popular terms from spatio-temporal documents published with a specified region. We consider the Top-k Spatial-Temporal Term (ST2) Subscription. Given an ST2 subscription, we continuously maintain up-to-date top-k most popular terms over a stream of spatio-temporal documents. The ST2 subscription takes into account both frequency and recency of a term generated from spatio-temporal document streams in evaluating its popularity. We propose an efficient solution to process a large number of ST2 subscriptions over a stream of spatio-temporal documents. The performance of processing ST2 subscriptions is studied in extensive experiments based on two real spatio-temporal datasets.
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关键词
publish,subscribe,spatial,temporal,stream
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