推荐系统的协同多辅助信息变分自编码器

Jin-Bo Bai, Zhijie Ban
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引用次数: 3

摘要

协同过滤在推荐系统中有着广泛的应用。由于基于协作的方法容易出现稀疏性和冷启动等问题,因此提出了混合方法。近年来,相关方法指出,通过对项目辅助信息潜变量的随机分布进行推断,可以非常有效地缓解上述问题。通常情况下,项目拥有不止一种辅助信息。我们如何用多个辅助信息来推断潜在变量的随机分布?本文提出了一种可同时考虑多种辅助信息的协同多辅助信息自编码器。一方面,我们可以通过对变分自编码器的改进来成功地完成上述问题。另一方面,我们通过在真实数据集上的实验证明了我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Multi-Auxiliary Information Variational Autoencoder for Recommender Systems
Collaborative filtering is widely used in recommendation systems. Hybrid approach has been proposed since the collaborative-based method is susceptible to problems such as sparsity and cold start. Recently, the related methods have pointed out that it is very effective to alleviate the above problem by inferring the stochastic distribution of the latent variables for item's auxiliary information. Usually, item boasts more than one kind of auxiliary information. How do we infer the stochastic distribution of the latent variables with multiple auxiliary information? In this paper, we proposed a collaborative multi-auxiliary information autoencoder that can simultaneously consider multiple types of auxiliary information correspondingly. On the one hand, we can successfully accomplish the above issues via the improvement of variational autoencoder. On the other hand, we demonstrated the effectiveness of our method through experiments on real datasets.
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