A Hybrid Conditional Variational Autoencoder Model for Personalised Top-n Recommendation

Yaxiong Wu, C. Macdonald, I. Ounis
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引用次数: 12

Abstract

The interactions of users with a recommendation system are in general sparse, leading to the well-known cold-start problem. Side information, such as age, occupation, genre and category, have been widely used to learn latent representations for users and items in order to address the sparsity of users' interactions. Conditional Variational Autoencoders (CVAEs) have recently been adapted for integrating side information as conditions to constrain the learned latent factors and to thereby generate personalised recommendations. However, the learning of effective latent representations that encapsulate both user (e.g. demographic information) and item side information (e.g. item categories) is still challenging. In this paper, we propose a new recommendation model, called Hybrid Conditional Variational Autoencoder (HCVAE) model, for personalised top-n recommendation, which effectively integrates both user and item side information to tackle the cold-start problem. Two CVAE-based methods -- using conditions on the learned latent factors, or conditions on the encoders and decoders -- are compared for integrating side information as conditions. Our HCVAE model leverages user and item side information as part of the optimisation objective to help the model construct more expressive latent representations and to better capture attributes of the users and items (such as demographic, category preferences) within the personalised item probability distributions. Thorough and extensive experiments conducted on both the MovieLens and Ta-feng datasets demonstrate that the HCVAE model conditioned on user category preferences with conditions on the learned latent factors can significantly outperform common existing top-n recommendation approaches such as MF-based and VAE/CVAE-based models.
个性化Top-n推荐的混合条件变分自编码器模型
用户与推荐系统的交互通常是稀疏的,这导致了众所周知的冷启动问题。副信息,如年龄、职业、类型和类别,已被广泛用于学习用户和项目的潜在表征,以解决用户交互的稀疏性。条件变分自编码器(CVAEs)最近被用于整合侧信息作为约束学习潜在因素的条件,从而产生个性化的推荐。然而,封装用户(例如人口统计信息)和项目侧信息(例如项目类别)的有效潜在表示的学习仍然具有挑战性。本文提出了一种新的个性化推荐模型——混合条件变分自编码器(HCVAE)模型,该模型有效地集成了用户侧和项目侧信息,解决了冷启动问题。比较了两种基于cvae的方法——使用学习到的潜在因素的条件,或编码器和解码器的条件——将侧信息作为条件进行整合。我们的HCVAE模型利用用户和物品侧信息作为优化目标的一部分,以帮助模型构建更具表现力的潜在表征,并在个性化的物品概率分布中更好地捕获用户和物品的属性(如人口统计、类别偏好)。在MovieLens和Ta-feng数据集上进行的深入和广泛的实验表明,HCVAE模型以用户类别偏好为条件,以学习到的潜在因素为条件,可以显著优于现有的常见top-n推荐方法,如基于df和基于VAE/ cvae的模型。
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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