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Leveraging Reconstructive Profiles of Users and Items for Tag-Aware Recommendation

机译:利用用户和项目的重建配置文件,以获取标签感知建议

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It is an effective recommendation method by revealing user preferences and extracting latent semantic information of items through social tag information. Recent research shows impressive recommendation performance by using neural network-based methods to transform tag-based user or item profiles to abstract feature representations. However, in the process of training a neural network, these methods need an more effective measurement to balance the tag-based profiles and the abstract representations to further improve item recommendation. This paper proposes a method based on Generative Adversarial Networks to tackle this issue. In this method, abstract features of users and items are extracted from their tag-based profiles by a disentangling network. These abstract features are then used to calculate the probability of a user preferring an item, and are also used to reconstruct new user and item profiles by a generative network. Furthermore, the discriminative network is introduced to identify generated profiles for enforcing smoothness in the representation of users and items. Experiments on two real-world data-sets demonstrate the state-of-the-art performance of the proposed method.
机译:通过揭示用户偏好并通过社交标签信息提取项目的潜在语义信息是一种有效的推荐方法。最近的研究通过使用基于神经网络的方法来转换基于标记的用户或项目配置文件来阐述令人印象深刻的推荐性能。然而,在培训神经网络的过程中,这些方法需要更有效的测量来平衡基于标签的简档和抽象表示,以进一步改进项目推荐。本文提出了一种基于生成的对抗性网络的方法来解决这个问题。在此方法中,用户和项目的抽象特征是通过解开网络从基于标签的配置文件中提取的。然后,这些抽象特征用于计算更喜欢项目的用户的概率,并且还用于通过生成网络重建新用户和项目配置文件。此外,引入鉴别的网络以识别生成的简档,以在用户和项目的表示中强制执行平滑度。两个真实数据集的实验证明了所提出的方法的最先进的性能。

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