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Collaborative Generative Adversarial Network for Recommendation Systems

机译:建议系统的协同生成对抗网络

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Recommendation systems have been a core part of daily Internet life. Conventional recommendation models hardly defend adversaries due to the natural noise like misclicking. Recent researches on GAN-based recommendation systems can improve the robustness of the learning models, yielding the state-of-the-art performance. The basic idea is to adopt an interplay minimax game on two recommendation systems by picking negative samples as fake items and employ reinforcement learning policy. However, such strategy may lead to mode collapse and result in high vulnerability to adversarial perturbations on its model parameters. In this paper, we propose a new collaborative framework, namely Collaborative Generative Adversarial Network (CGAN), which adopts Variational Auto-encoder (VAE) as the generator and performs adversarial training in the continuous embedding space. The formulation of CGAN has two advantages: 1) its auto-encoder takes the role of generator to mimic the true distribution of users preferences over items by capturing subtle latent factors underlying user-item interactions; 2) the adversarial training in continuous space enhances models robustness and performance. Extensive experiments conducted on two real-world benchmark recommendation datasets demonstrate the superior performance of our CGAN in comparison with the state-of-the-art GAN-based methods.
机译:推荐系统已经日常网络生活的核心部分。常规的推荐模型几乎没有防守的对手,由于像misclicking自然噪音。在基于GaN的推荐系统近年来的研究可以提高学习模型的鲁棒性,得到国家的最先进的性能。其基本思想是通过拾取阴性样品为假冒产品,并采用增强学习政策采取两种推荐系统的相互作用极小游戏。然而,这种策略可能会导致崩溃模式并导致高脆弱性在其模型参数对抗性扰动。在本文中,我们提出了一个新的合作框架,即协同剖成对抗性网(CGAN),采用变自动编码器(VAE)作为连续嵌入空间的生成和执行对抗性训练。 CGAN的制剂有两个优点:1)它的自动编码器由捕获底层用户 - 项目交互细微潜在因子取发电机的作用,以模拟在项目的用户的喜好的真实分布; 2)在连续的空间提高了模型的鲁棒性和性能的对抗性训练。两个现实世界的标杆推荐数据集进行了大量的实验证明与国家的最先进的基于GaN的方法相比,我们的CGAN的卓越性能。

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