Improving Search Results with Prior Similar Queries

Yashar Moshfeghi, Kristiyan Velinov, P. Triantafillou
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引用次数: 1

Abstract

This paper describes a novel approach to re-ranking search engine result pages (SERP): Its fundamental principle is to re-rank results to a given query, based on exploiting evidence gathered from past similar search queries. Our approach is inspired by collaborative filtering, with the main challenge being to find the set of similar queries, while also taking efficiency into account. In particular, our approach aims to address this challenge by proposing a combination of a similarity graph and a locality sensitive hashing scheme. We construct a set of features from our similarity graph and build a prediction model using the Hoeffding decision tree algorithm. We have evaluated the effectiveness of our model in terms of P@1, MAP@10, and nDCG@10, using the Yandex Data Challenge data set. We have compared the performance of our model against two baselines, namely, the Yandex initial ranking and the decision tree model learnt on the same set of features when extracted based on query repetition (i.e. excluding the evidence of similar queries in our approach). Our results reveal that the proposed approach consistently and (statistically) significantly outperforms both baselines.
利用先前的相似查询改进搜索结果
本文描述了一种重新排序搜索引擎结果页面(SERP)的新方法:其基本原理是根据从过去类似搜索查询中收集的证据对给定查询的结果进行重新排序。我们的方法受到协同过滤的启发,主要的挑战是找到一组相似的查询,同时还要考虑效率。特别是,我们的方法旨在通过提出相似图和位置敏感散列方案的组合来解决这一挑战。我们从相似图中构造了一组特征,并使用Hoeffding决策树算法建立了预测模型。我们使用Yandex数据挑战数据集,根据P@1、MAP@10和nDCG@10评估了我们模型的有效性。我们将模型的性能与两条基线进行了比较,即Yandex初始排名和基于查询重复提取时在同一组特征上学习的决策树模型(即排除我们方法中类似查询的证据)。我们的结果表明,所提出的方法一致且(统计上)显著优于两个基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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