Personalized search result diversification via structured learning

Shangsong Liang, Z. Ren, M. de Rijke
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引用次数: 43

Abstract

This paper is concerned with the problem of personalized diversification of search results, with the goal of enhancing the performance of both plain diversification and plain personalization algorithms. In previous work, the problem has mainly been tackled by means of unsupervised learning. To further enhance the performance, we propose a supervised learning strategy. Specifically, we set up a structured learning framework for conducting supervised personalized diversification, in which we add features extracted directly from the tokens of documents and those utilized by unsupervised personalized diversification algorithms, and, importantly, those generated from our proposed user-interest latent Dirichlet topic model. Based on our proposed topic model whether a document can cater to a user's interest can be estimated in our learning strategy. We also define two constraints in our structured learning framework to ensure that search results are both diversified and consistent with a user's interest. We conduct experiments on an open personalized diversification dataset and find that our supervised learning strategy outperforms unsupervised personalized diversification methods as well as other plain personalization and plain diversification methods.
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通过结构化学习实现个性化搜索结果多样化
本文研究了搜索结果的个性化多样化问题,目的是提高普通多样化和普通个性化算法的性能。在以前的工作中,这个问题主要是通过无监督学习来解决的。为了进一步提高性能,我们提出了一种监督学习策略。具体来说,我们建立了一个结构化的学习框架,用于进行有监督的个性化多样化,其中我们添加了直接从文档令牌中提取的特征,以及由无监督个性化多样化算法使用的特征,重要的是,从我们提出的用户兴趣潜在Dirichlet主题模型中生成的特征。基于我们提出的主题模型,可以在我们的学习策略中估计文档是否符合用户的兴趣。我们还在结构化学习框架中定义了两个约束,以确保搜索结果既多样化又与用户的兴趣一致。我们在一个开放的个性化多样化数据集上进行了实验,发现我们的监督学习策略优于无监督的个性化多样化方法以及其他普通的个性化和普通的多样化方法。
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