结合时间和内容感知特征的微博检索

Abu Nowshed Chy, Md Zia Ullah, Masaki Aono
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引用次数: 1

摘要

微博,尤其是推特,已经成为我们日常生活中不可或缺的一部分,用于搜索最新的新闻和事件信息。由于tweets的短长度特点,仅基于内容相关性的搜索结果不能满足用户的信息需求。最近的研究表明,在这方面考虑时间方面可以显著提高检索性能。在本文中,我们提出了一种基于tweet的时间特征、账户相关特征和Twitter特定特征以及文本特征对搜索结果进行重新排序的方法。我们还应用了两阶段查询扩展技术来提高tweet的相关性。经过LASSO和弹性网正则化的自动特征选择;我们采用随机森林作为特征排序方法来估计所选特征的重要性。然后,根据重要性得分,加权排序模型结合特征值来估计相关性得分。我们基于TREC微博2011和2012查询对TREC Tweets2011集合进行了实验。实验结果证明了我们的方法在precision@30 (P@30)、平均精度(MAP)和往复式精度(R-Prec)指标方面优于基线的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining temporal and content aware features for microblog retrieval
Microblog, especially Twitter, have become an integral part of our daily life for searching latest news and events information. Due to short length characteristics of tweets, only content-relevance based search result cannot satisfy user's information need. Recent research shows that considering temporal aspects in this regard improve the retrieval performance significantly. In this paper, we propose a method to re-rank the search result based on temporal features, account related features, and Twitter specific features along with textual features of tweets. We also applied a two stage query expansion technique to improve the relevancy of tweets. After automatic feature selection by using LASSO and elastic-net regularization; we applied random forest as a feature ranking method to estimate the importance of selected feature. Then, with that importance score, a weighted ranking model combines the features value to estimate the relevance score. We conducted our experiments based on the TREC Microblog 2011 and 2012 queries over the TREC Tweets2011 collection. Experimental result demonstrates the effectiveness of our method over the baseline in terms of precision@30 (P@30), mean average precision (MAP), and reciprocal-precision (R-Prec) metrics.
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