Adversarial Collaborative Neural Network for Robust Recommendation

Feng Yuan, Lina Yao, B. Benatallah
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引用次数: 61

Abstract

Most of recent neural network(NN)-based recommendation techniques mainly focus on improving the overall performance, such as hit ratio for top-N recommendation, where the users' feedbacks are considered as the ground-truth. In real-world applications, those feedbacks are possibly contaminated by imperfect user behaviours, posing challenges on the design of robust recommendation methods. Some methods apply man-made noises on the input data to train the networks more effectively (e.g. the collaborative denoising auto-encoder). In this work, we propose a general adversarial training framework for NN-based recommendation models, improving both the model robustness and the overall performance. We apply our approach on the collaborative auto-encoder model, and show that the combination of adversarial training and NN-based models outperforms highly competitive state-of-the-art recommendation methods on three public datasets.
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稳健推荐的对抗协同神经网络
最近大多数基于神经网络的推荐技术主要关注于提高整体性能,例如top-N推荐的命中率,其中用户的反馈被认为是基础事实。在现实应用中,这些反馈可能会受到不完美用户行为的污染,这对鲁棒推荐方法的设计提出了挑战。一些方法在输入数据上应用人工噪声来更有效地训练网络(如协同去噪自编码器)。在这项工作中,我们为基于神经网络的推荐模型提出了一个通用的对抗训练框架,提高了模型的鲁棒性和整体性能。我们将我们的方法应用于协作自编码器模型,并表明对抗性训练和基于神经网络的模型的组合在三个公共数据集上优于竞争激烈的最先进的推荐方法。
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