利用标签进行自适应微博爬行

Xinyue Wang, L. Tokarchuk, F. Cuadrado, S. Poslad
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引用次数: 33

摘要

研究人员利用微博服务,如Twitter,来检测和监控现实世界的事件。现有的方法是根据监测一组预定义关键字收集的数据得出结论的。在本文中,我们表明这种数据收集方式有丢失大量相关信息的风险。然后,我们提出了一种自适应爬行模型,可以检测新兴的流行标签,并对它们进行监控,以检索更多的高度相关的数据,以获取感兴趣的事件。该模型分析从直播流中收集的标签的流量模式,以更新后续的收集查询。为了评估这种自适应爬行模型,我们将其应用于2012年伦敦奥运会期间收集的数据集。我们的分析表明,基于改进关键字自适应算法的自适应爬行比预定义关键字爬行收集了更全面的数据集,同时只引入了最少的噪声。
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Exploiting hashtags for adaptive microblog crawling
Researchers have capitalized on microblogging services, such as Twitter, for detecting and monitoring real world events. Existing approaches have based their conclusions on data collected by monitoring a set of pre-defined keywords. In this paper, we show that this manner of data collection risks losing a significant amount of relevant information. We then propose an adaptive crawling model that detects emerging popular hashtags, and monitors them to retrieve greater amounts of highly associated data for events of interest. The proposed model analyzes the traffic patterns of the hashtags collected from the live stream to update subsequent collection queries. To evaluate this adaptive crawling model, we apply it to a dataset collected during the 2012 London Olympic Games. Our analysis shows that adaptive crawling based on the proposed Refined Keyword Adaptation algorithm collects a more comprehensive dataset than pre-defined keyword crawling, while only introducing a minimum amount of noise.
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