探索减少长网页查询

Niranjan Balasubramanian, G. Kumaran, Vitor R. Carvalho
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引用次数: 89

摘要

对于网络搜索引擎来说,长查询是一个困难但越来越重要的部分。查询约简是一种从长查询中删除不必要查询项的技术,它提高了对TREC集合进行临时检索的性能。此外,它在改善长网页查询方面有很大的潜力(在NDCG@5上提高了25%)。然而,由于缺乏准确的查询性能预测器以及搜索引擎架构和排名算法的限制,网络上的查询减少受到阻碍。在本文中,我们提出了利用有效和高效的查询性能预测器的长web查询的查询缩减技术。我们提出了三种结合这些预测器来执行自动查询约简的学习公式。这些公式支持对受影响查询数量的平均改进进行交易,并支持轻松集成到搜索引擎的体系结构中,以减少排名时间查询。对商业搜索引擎发布的大量长查询进行的实验表明,所提出的技术明显优于基线,在受影响的查询集中,NDCG@5的性能提高了12%以上。对公式的扩展,如结果交错,进一步改善了结果。我们发现所提出的技术在最重要的地方提供了一致的检索收益:性能较差的长web查询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring reductions for long web queries
Long queries form a difficult, but increasingly important segment for web search engines. Query reduction, a technique for dropping unnecessary query terms from long queries, improves performance of ad-hoc retrieval on TREC collections. Also, it has great potential for improving long web queries (upto 25% improvement in NDCG@5). However, query reduction on the web is hampered by the lack of accurate query performance predictors and the constraints imposed by search engine architectures and ranking algorithms. In this paper, we present query reduction techniques for long web queries that leverage effective and efficient query performance predictors. We propose three learning formulations that combine these predictors to perform automatic query reduction. These formulations enable trading of average improvements for the number of queries impacted, and enable easy integration into the search engine's architecture for rank-time query reduction. Experiments on a large collection of long queries issued to a commercial search engine show that the proposed techniques significantly outperform baselines, with more than 12% improvement in NDCG@5 in the impacted set of queries. Extension to the formulations such as result interleaving further improves results. We find that the proposed techniques deliver consistent retrieval gains where it matters most: poorly performing long web queries.
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