利用用户消费行为进行有效的项目标记

Shen Liu, Hongyan Liu
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引用次数: 2

摘要

自动标注技术在搜索和推荐等许多应用中具有重要意义,近年来引起了许多研究者的关注。现有的方法主要依靠用户的标注行为或物品的内容信息进行标注,忽略了用户的消费行为。在本文中,我们建议利用这些信息并引入一种称为联合标记LDA的概率模型来提高标记精度。提出了一种基于零阶坍缩变分贝叶斯的有效算法。在真实数据集上进行的实验表明,联合标记LDA优于现有的竞争方法。
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Exploiting User Consuming Behavior for Effective Item Tagging
Automatic tagging techniques are important for many applications such as searching and recommendation, which has attracted many researchers' attention in recent years. Existing methods mainly rely on users' tagging behavior or items' content information for tagging, yet users' consuming behavior is ignored. In this paper, we propose to leverage such information and introduce a probabilistic model called joint-tagging LDA to improve tagging accuracy. An effective algorithm based on Zero-Order Collapsed Variational Bayes is developed. Experiments conducted on a real dataset demonstrate that joint-tagging LDA outperforms existing competing methods.
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