Parallel Recurrent Neural Network Architectures for Feature-rich Session-based Recommendations

Balázs Hidasi, Massimo Quadrana, Alexandros Karatzoglou, D. Tikk
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引用次数: 414

Abstract

Real-life recommender systems often face the daunting task of providing recommendations based only on the clicks of a user session. Methods that rely on user profiles -- such as matrix factorization -- perform very poorly in this setting, thus item-to-item recommendations are used most of the time. However the items typically have rich feature representations such as pictures and text descriptions that can be used to model the sessions. Here we investigate how these features can be exploited in Recurrent Neural Network based session models using deep learning. We show that obvious approaches do not leverage these data sources. We thus introduce a number of parallel RNN (p-RNN) architectures to model sessions based on the clicks and the features (images and text) of the clicked items. We also propose alternative training strategies for p-RNNs that suit them better than standard training. We show that p-RNN architectures with proper training have significant performance improvements over feature-less session models while all session-based models outperform the item-to-item type baseline.
用于功能丰富的基于会话的推荐的并行递归神经网络架构
现实生活中的推荐系统常常面临着一项艰巨的任务,即仅根据用户会话的点击提供推荐。依赖于用户配置文件的方法——比如矩阵分解——在这种情况下执行得非常差,因此大多数情况下使用的是逐项推荐。然而,这些项目通常具有丰富的特征表示,例如可用于对会话建模的图片和文本描述。在这里,我们研究如何使用深度学习在基于循环神经网络的会话模型中利用这些特征。我们表明,明显的方法没有利用这些数据源。因此,我们引入了一些并行RNN (p-RNN)架构来基于点击和点击项目的特征(图像和文本)对会话进行建模。我们还提出了比标准训练更适合p- rnn的替代训练策略。我们表明,经过适当训练的p-RNN体系结构比无特征会话模型具有显着的性能改进,而所有基于会话的模型都优于项目到项目类型基线。
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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