有效微博搜索的排名模型选择与融合

Zhongyu Wei, Wei Gao, Tarek El-Ganainy, Walid Magdy, Kam-Fai Wong
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引用次数: 14

摘要

重新排序对微博搜索的有效性有正向影响。然而,现有的方法主要集中在使用单个排序器来学习有关各种相关特征的更好的排序函数。鉴于各种可用的排名学习器(如学习排序算法),在这项工作中,我们主要研究一个正交问题,其中多个学习到的排名模型形成一个集成来对检索到的tweet进行重新排名,而不仅仅是使用单个排名模型,以获得更高的搜索效率。我们探索了基于多个秩学习器产生的结果列表的查询敏感模型选择和秩融合方法的使用。基于TREC微博数据集,我们发现基于选择的集成方法可以显著优于使用单个最佳排名的方法,并且也明显优于将所有可用模型的结果组合在一起的排名融合方法。
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Ranking model selection and fusion for effective microblog search
Re-ranking was shown to have positive impact on the effectiveness for microblog search. Yet existing approaches mostly focused on using a single ranker to learn some better ranking function with respect to various relevance features. Given various available rank learners (such as learning to rank algorithms), in this work, we mainly study an orthogonal problem where multiple learned ranking models form an ensemble for re-ranking the retrieved tweets than just using a single ranking model in order to achieve higher search effectiveness. We explore the use of query-sensitive model selection and rank fusion methods based on the result lists produced from multiple rank learners. Base on the TREC microblog datasets, we found that our selection-based ensemble approach can significantly outperform using the single best ranker, and it also has clear advantage over the rank fusion that combines the results of all the available models.
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Session details: Paper session I Hyperlink-extended pseudo relevance feedback for improved microblog retrieval Ranking model selection and fusion for effective microblog search Session details: Paper session II Proceedings of the first international workshop on Social media retrieval and analysis
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