Low-dimensional Alignment for Cross-Domain Recommendation

Tian-Qi Wang, Fuzhen Zhuang, Zhiqiang Zhang, Daixin Wang, Jun Zhou, Qing He
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引用次数: 11

Abstract

Cold start problem is one of the most challenging and long-standing problems in recommender systems, and cross-domain recommendation (CDR) methods are effective for tackling it. Most cold-start related CDR methods require training a mapping function between high-dimensional embedding space using overlapping user data. However, the overlapping data is scarce in many recommendation tasks, which makes it difficult to train the mapping function. In this paper, we propose a new approach for CDR, which aims to alleviate the training difficulty. The proposed method can be viewed as a special parameterization of the mapping function without hurting expressiveness, which makes use of non-overlapping user data and leads to effective optimization. Extensive experiments on two real-world CDR tasks are performed to evaluate the proposed method. In the case that there are few overlapping data, the proposed method outperforms the existed state-of-the-art method by 14% (relative improvement).
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跨领域推荐的低维对齐
冷启动问题是推荐系统中最具挑战性和长期存在的问题之一,跨域推荐(CDR)方法是解决冷启动问题的有效方法。大多数与冷启动相关的CDR方法都需要使用重叠的用户数据来训练高维嵌入空间之间的映射函数。然而,在许多推荐任务中,重叠数据很少,这给映射函数的训练带来了困难。在本文中,我们提出了一种新的CDR方法,旨在减轻训练难度。该方法可以看作是映射函数的一种特殊的参数化,在不影响表达性的情况下,利用了不重叠的用户数据,实现了有效的优化。在两个真实的CDR任务上进行了广泛的实验来评估所提出的方法。在重叠数据较少的情况下,本文提出的方法比现有的最先进方法高出14%(相对改进)。
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