Personalized Fashion Sequential Recommendation with Visual Feature Based on Conditional Hierarchical VAE

Keiichi Suekane, Ryoichi Osawa, Aozora Inagaki, Taiga Matsui, Tomohiro Tanabe, Keita Ishikawa, T. Takagi
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引用次数: 2

Abstract

With the increase of online shopping services, there has been much research on fashion item recommendation. Unlike standard recommendation systems, a recommendation for fashion items needs to take into account the context of the item IDs in the user behavior and that of the fashion-specific visual features such as color and design. In this study, we propose the conditional hierarchical variational auto-encoder (CHVAE) for extracting fashion-specific visual features, and construct a fashion item recommendation system based on it. CHVAE is an extension of VAE to enable conditional and hierarchical learning. It can capture the continuous latent space of color and design using item images and labels, and extract visual features for fashion recommendations. In our experiments, we show that the proposed method outperforms an extensive list of state-of-the-art sequential recommendation models and achieves the same or better performance as human stylists.
基于条件分层VAE的视觉特征个性化时装序列推荐
随着网上购物服务的增多,关于时尚单品推荐的研究也越来越多。与标准推荐系统不同,时尚产品的推荐需要考虑用户行为中产品id的上下文以及特定于时尚的视觉特征(如颜色和设计)。在这项研究中,我们提出了条件分层变分自编码器(CHVAE)来提取时尚特定的视觉特征,并在此基础上构建了一个时尚商品推荐系统。CHVAE是VAE的延伸,可以实现条件学习和分层学习。它可以利用物品图像和标签捕捉色彩和设计的连续潜在空间,提取视觉特征进行时尚推荐。在我们的实验中,我们证明了所提出的方法优于一系列最先进的顺序推荐模型,并达到了与人类造型师相同或更好的性能。
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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