4.4 Article

Top-k spatial-keyword publish/subscribe over sliding window

Journal

VLDB JOURNAL
Volume 26, Issue 3, Pages 301-326

Publisher

SPRINGER
DOI: 10.1007/s00778-016-0453-2

Keywords

Publish/subscribe system; Top-k spatial-keyword queries; Stream; Sliding window; Distributed processing

Funding

  1. ARC [DE140100679, DP130103245, DP150103071, DP150102728, DP170101628]
  2. [NSFC61232006]
  3. Australian Research Council [DE140100679] Funding Source: Australian Research Council

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With the prevalence of social media and GPS-enabled devices, a massive amount of geo-textual data have been generated in a stream fashion, leading to a variety of applications such as location-based recommendation and information dissemination. In this paper, we investigate a novel real-time top- monitoring problem over sliding window of streaming data; that is, we continuously maintain the top-k most relevant geo-textual messages (e.g., geo-tagged tweets) for a large number of spatial-keyword subscriptions (e.g., registered users interested in local events) simultaneously. To provide the most recent information under controllable memory cost, sliding window model is employed on the streaming geo-textual data. To the best of our knowledge, this is the first work to study top- spatial-keyword publish/subscribe over sliding window. A novel centralized system, called Skype (Top-k Spatial-keyword Publish/Subscribe), is proposed in this paper. In Skype, to continuously maintain top- results for massive subscriptions, we devise a novel indexing structure upon subscriptions such that each incoming message can be immediately delivered on its arrival. To reduce the expensive top- re-evaluation cost triggered by message expiration, we develop a novel cost-based k -skyband technique to reduce the number of re-evaluations in a cost-effective way. Extensive experiments verify the great efficiency and effectiveness of our proposed techniques. Furthermore, to support better scalability and higher throughput, we propose a distributed version of Skype, namely DSkype, on top of Storm, which is a popular distributed stream processing system. With the help of fine-tuned subscription/message distribution mechanisms, DSkype can achieve orders of magnitude speed-up than its centralized version.

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