Long and Short-Term Recommendations with Recurrent Neural Networks

Robin Devooght, H. Bersini
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引用次数: 111

Abstract

Recurrent neural networks have recently been successfully applied to the session-based recommendation problem, and is part of a growing interest for collaborative filtering based on sequence prediction. This new approach to recommendations reveals an aspect that was previously overlooked: the difference between short-term and long-term recommendations. In this work we characterize the full short-term/long-term profile of many collaborative filtering methods, and we show how recurrent neural networks can be steered towards better short or long-term predictions. We also show that RNNs are not only adapted to session-based collaborative filtering, but are perfectly suited for collaborative filtering on dense datasets where it outperforms traditional item recommendation algorithms.
递归神经网络的长期和短期建议
递归神经网络最近已经成功地应用于基于会话的推荐问题,并且是基于序列预测的协同过滤的一部分。这种新的建议方法揭示了以前被忽视的一个方面:短期建议和长期建议之间的区别。在这项工作中,我们描述了许多协同过滤方法的完整短期/长期特征,并展示了如何将递归神经网络导向更好的短期或长期预测。我们还表明,rnn不仅适用于基于会话的协同过滤,而且非常适合于密集数据集的协同过滤,它优于传统的项目推荐算法。
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