隐式搜索结果多样化的简明整数线性规划公式

Haitao Yu, A. Jatowt, Roi Blanco, Hideo Joho, J. Jose, Long Chen, Fajie Yuan
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引用次数: 12

摘要

为应对模棱两可和/或不够明确的查询,搜索结果多样化(SRD)是一项关键技术,已引起广泛关注。本文的重点是隐式 SRD,即事先不知道查询可能涉及的子主题。我们将隐式 SRD 表述为利用整数线性规划(ILP)对 k 个示例文档进行选择和排序的过程。与依赖近似方法的常见做法不同,这种表述使我们能够获得目标函数的最优解。基于四个基准集合,我们进行了广泛的实证实验,结果表明(1) 不同的初始运行、输入文档的数量、查询类型和计算文档相似性的方式等因素会显著影响多样化模型的性能。建议在开发隐式 SRD 方法时仔细研究这些因素。(2) 与最先进的无监督隐式 SRD 方法相比,所提出的方法能大幅提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Concise Integer Linear Programming Formulation for Implicit Search Result Diversification
To cope with ambiguous and/or underspecified queries, search result diversification (SRD) is a key technique that has attracted a lot of attention. This paper focuses on implicit SRD, where the possible subtopics underlying a query are unknown beforehand. We formulate implicit SRD as a process of selecting and ranking k exemplar documents that utilizes integer linear programming (ILP). Unlike the common practice of relying on approximate methods, this formulation enables us to obtain the optimal solution of the objective function. Based on four benchmark collections, our extensive empirical experiments reveal that: (1) The factors, such as different initial runs, the number of input documents, query types and the ways of computing document similarity significantly affect the performance of diversification models. Careful examinations of these factors are highly recommended in the development of implicit SRD methods. (2) The proposed method can achieve substantially improved performance over the state-of-the-art unsupervised methods for implicit SRD.
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