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CoFiGAN: Collaborative filtering by generative and discriminative training for one-class recommendation

机译:CoFiGAN:通过生成性和区分性培训进行协作过滤,以提供一类推荐

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摘要

In this paper, we study an important collaborative filtering problem with users' one-class feedback such as purchases and likes that are pervasive in various recommendation scenarios. In particular, we make a significant extension of IRGAN by introducing rich interactions between a generator and a discriminator, and then design a novel collaborative filtering algorithm termed as CoFiGAN. In our CoFiGAN, the complementarity of the generative training and the discriminative training is exploited more completely, which enhances the accuracy of modeling users' behaviors. Similar to other GAN-based algorithms, our CoFiGAN can also be interpreted as playing a minimax game, i.e., the generator generates samples close to the true ones aiming to confuse the discriminator, while the latter focuses on distinguishing between the true and generated samples. Different from others, the generator in our CoFiGAN generates items from a more direct and effective way under the guidake of the discriminator in order to accelerate convergence in adversarial training and increase the diversity of the generated samples to avoid mode collapse to some extent. Extensive empirical studies on four public and real-world datasets show that our CoFiGAN performs better than IRGAN and other very strong recommendation algorithms in terms of the commonly used ranking-oriented evaluation metrics. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本文中,我们使用用户的一类反馈(例如在各种推荐场景中普遍存在的购买和喜欢)来研究一个重要的协作过滤问题。特别是,我们通过引入生成器和鉴别器之间的丰富交互,对IRGAN进行了重大扩展,然后设计了一种称为CoFiGAN的新型协作过滤算法。在我们的CoFiGAN中,更全面地利用了生成训练与判别训练的互补性,从而提高了建模用户行为的准确性。与其他基于GAN的算法相似,我们的CoFiGAN也可以被解释为玩最小极大游戏,即生成器生成的样本接近真实样本,目的是混淆鉴别器,而后者则专注于区分真实样本和生成样本。与其他人不同,我们的CoFiGAN中的生成器在区分器的引导下以更直接和有效的方式生成项,以加快对抗训练中的收敛速度并增加生成的样本的多样性,从而在某种程度上避免模式崩溃。对四个公共和真实数据集的大量实证研究表明,就常用的面向排名的评估指标而言,我们的CoFiGAN的性能优于IRGAN和其他非常强大的推荐算法。 (C)2019 Elsevier B.V.保留所有权利。

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