Fast Approximate Filtering of Search Results Sorted by Attribute

F. M. Nardini, Roberto Trani, Rossano Venturini
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引用次数: 3

Abstract

Several Web search services enable their users with the possibility of sorting the list of results by a specific attribute, e.g., sort "by price" in e-commerce. However, sorting the results by attribute could bring marginally relevant results in the top positions thus leading to a poor user experience. This motivates the definition of the relevance-aware filtering problem. This problem asks to remove results from the attribute-sorted list to maximize its final overall relevance. Recently, an optimal solution to this problem has been proposed. However, it has strong limitations in the Web scenario due to its high computational cost. In this paper, we propose ϵ-Filtering: an efficient approximate algorithm with strong approximation guarantees on the relevance of the final list. More precisely, given an allowed approximation error ϵ, the proposed algorithm finds a(1-ϵ)"optimal filtering, i.e., the relevance of its solution is at least (1-ϵ) times the optimum. We conduct a comprehensive evaluation of ϵ-Filtering against state-of-the-art competitors on two real-world public datasets. Experiments show that ϵ-Filtering achieves the desired levels of effectiveness with a speedup of up to two orders of magnitude with respect to the optimal solution while guaranteeing very small approximation errors.
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按属性排序搜索结果的快速近似过滤
一些Web搜索服务使用户能够按特定属性对结果列表进行排序,例如,电子商务中的“按价格”排序。然而,按属性排序结果可能会在顶部位置带来不太相关的结果,从而导致糟糕的用户体验。这激发了相关感知过滤问题的定义。这个问题要求从属性排序列表中删除结果,以最大化其最终的总体相关性。最近,有人提出了这个问题的最优解。然而,由于计算成本高,它在Web场景中有很强的局限性。在本文中,我们提出了ϵ-Filtering:一个有效的近似算法,对最终列表的相关性有很强的近似保证。更准确地说,给定一个允许的近似误差,所提出的算法找到一个(1- ε)最优滤波,即其解的相关性至少是最优的(1- λ)倍。我们在两个真实世界的公共数据集上对ϵ-Filtering与最先进的竞争对手进行了全面的评估。实验表明,ϵ-Filtering在保证非常小的近似误差的同时,相对于最优解的加速高达两个数量级,达到了所需的效率水平。
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