With the rapid development of E-commerce and the increase in the quantity of items, users are presented with more items hence their interests broaden. It is increasingly difficult to model user intentions with traditional methods, which model the user's preference for an item by combining a single user vector and an item vector. Recently, some methods are proposed to generate multiple user interest vectors and achieve better performance compared to traditional methods. However, empirical studies demonstrate that vectors generated from these multi-interests methods are sometimes homogeneous, which may lead to sub-optimal performance. In this paper, we propose a novel method of Diversity Regularized Interests Modeling (DRIM) for Recommender Systems. We apply a capsule network in a multi-interest extractor to generate multiple user interest vectors. Each interest of the user should have a certain degree of distinction, thus we introduce three strategies as the diversity regularized separator to separate multiple user interest vectors. Experimental results on public and industrial data sets demonstrate the ability of the model to capture different interests of a user and the superior performance of the proposed approach.
翻译:随着电子商务的迅速发展以及项目数量的增加,用户会看到更多的项目,从而扩大他们的利益;越来越难以用传统方法来模拟用户的意图,传统方法通过将单一的用户矢量和物品矢量结合起来来模拟用户对某一项目的偏好;最近,提出了一些方法,以产生多种用户兴趣矢量,并实现与传统方法相比更好的性能;然而,经验研究表明,这些多种利益方法产生的矢量有时是同质的,这可能导致低于最佳的性能;在本文件中,我们提出了一种为建议者系统建立多样化固定利益模型的新方法(DRIM)。我们在一个多利益提取器中应用一个胶囊网络来产生多种用户兴趣矢量。每个用户的利益都应有一定程度的区别,因此我们提出三种战略,作为多样化的正规分隔器,将多种用户兴趣矢量分开。关于公共和工业数据集的实验结果表明模型能够捕捉用户的不同利益和拟议方法的优异性。