Collaborative Reflection-Augmented Autoencoder Network for Recommender Systems

Lianghao Xia, Chao Huang, Yong Xu, Huance Xu, Xiang Li, Weiguo Zhang
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引用次数: 6

Abstract

As the deep learning techniques have expanded to real-world recommendation tasks, many deep neural network based Collaborative Filtering (CF) models have been developed to project user-item interactions into latent feature space, based on various neural architectures, such as multi-layer perceptron, autoencoder, and graph neural networks. However, the majority of existing collaborative filtering systems are not well designed to handle missing data. Particularly, in order to inject the negative signals in the training phase, these solutions largely rely on negative sampling from unobserved user-item interactions and simply treating them as negative instances, which brings the recommendation performance degradation. To address the issues, we develop a Collaborative Reflection-Augmented Autoencoder Network (CRANet), that is capable of exploring transferable knowledge from observed and unobserved user-item interactions. The network architecture of CRANet is formed of an integrative structure with a reflective receptor network and an information fusion autoencoder module, which endows our recommendation framework with the ability of encoding implicit user’s pairwise preference on both interacted and non-interacted items. Additionally, a parametric regularization-based tied-weight scheme is designed to perform robust joint training of the two-stage CRANetmodel. We finally experimentally validate CRANeton four diverse benchmark datasets corresponding to two recommendation tasks, to show that debiasing the negative signals of user-item interactions improves the performance as compared to various state-of-the-art recommendation techniques. Our source code is available at https://github.com/akaxlh/CRANet.
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协同反射增强自编码器网络推荐系统
随着深度学习技术扩展到现实世界的推荐任务,许多基于深度神经网络的协同过滤(CF)模型已经被开发出来,以将用户-项目交互投影到潜在特征空间,基于各种神经结构,如多层感知器、自编码器和图神经网络。然而,大多数现有的协同过滤系统都没有很好地设计来处理丢失的数据。特别是,为了在训练阶段注入负面信号,这些解决方案在很大程度上依赖于从未观察到的用户-物品交互中进行负采样,并简单地将其视为负面实例,从而导致推荐性能下降。为了解决这些问题,我们开发了一个协作反射增强自动编码器网络(CRANet),它能够从观察到的和未观察到的用户-项目交互中探索可转移的知识。CRANet的网络架构是由反射受体网络和信息融合自编码器模块组成的一体化结构,这使得我们的推荐框架能够编码用户对交互和非交互项目的隐式配对偏好。此外,设计了一种基于参数正则化的捆绑权方案,对两阶段CRANetmodel进行鲁棒联合训练。我们最后通过实验验证了对应于两个推荐任务的CRANeton四种不同的基准数据集,以表明与各种最先进的推荐技术相比,消除用户-项目交互的负面信号可以提高性能。我们的源代码可从https://github.com/akaxlh/CRANet获得。
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