Side Information Fusion for Recommender Systems over Heterogeneous Information Network

Huan Zhao, Quanming Yao, Yangqiu Song, J. Kwok, Lee
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引用次数: 11

Abstract

Collaborative filtering (CF) has been one of the most important and popular recommendation methods, which aims at predicting users’ preferences (ratings) based on their past behaviors. Recently, various types of side information beyond the explicit ratings users give to items, such as social connections among users and metadata of items, have been introduced into CF and shown to be useful for improving recommendation performance. However, previous works process different types of information separately, thus failing to capture the correlations that might exist across them. To address this problem, in this work, we study the application of heterogeneous information network (HIN), which offers a unifying and flexible representation of different types of side information, to enhance CF-based recommendation methods. However, we face challenging issues in HIN-based recommendation, i.e., how to capture similarities of complex semantics between users and items in a HIN, and how to effectively fuse these similarities to improve final recommendation performance. To address these issues, we apply metagraph to similarity computation and solve the information fusion problem with a “matrix factorization (MF) + factorization machine (FM)” framework. For the MF part, we obtain the user-item similarity matrix from each metagraph and then apply low-rank matrix approximation to obtain latent features for both users and items. For the FM part, we apply FM with Group lasso (FMG) on the features obtained from the MF part to train the recommending model and, at the same time, identify the useful metagraphs. Besides FMG, a two-stage method, we further propose an end-to-end method, hierarchical attention fusing, to fuse metagraph-based similarities for the final recommendation. Experimental results on four large real-world datasets show that the two proposed frameworks significantly outperform existing state-of-the-art methods in terms of recommendation performance.
基于异构信息网络的推荐系统侧信息融合
协同过滤(CF)是目前最重要和最流行的推荐方法之一,其目的是根据用户过去的行为来预测用户的偏好(评分)。最近,除了用户对项目的明确评分之外,各种类型的附加信息(如用户之间的社会联系和项目的元数据)已经被引入CF,并被证明对提高推荐性能很有用。然而,以前的工作分别处理不同类型的信息,因此未能捕捉到可能存在于它们之间的相关性。为了解决这一问题,本文研究了异构信息网络(HIN)的应用,该网络为不同类型的侧信息提供了统一和灵活的表示,以增强基于cf的推荐方法。然而,在基于HIN的推荐中,我们面临着具有挑战性的问题,即如何捕获HIN中用户和项目之间复杂语义的相似性,以及如何有效地融合这些相似性以提高最终的推荐性能。为了解决这些问题,我们将元图应用于相似度计算,并采用“矩阵分解(MF) +分解机(FM)”的框架解决信息融合问题。对于MF部分,我们从每个元图中获得用户-物品相似度矩阵,然后应用低秩矩阵逼近来获得用户和物品的潜在特征。对于调频部分,我们将调频与群拉索(FMG)结合在调频部分得到的特征上训练推荐模型,同时识别出有用的元图。除了FMG这一两阶段的方法外,我们还提出了一种端到端的方法——分层注意力融合,用于融合基于元图的相似度,以获得最终的推荐。在四个大型真实数据集上的实验结果表明,这两个框架在推荐性能方面明显优于现有的最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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