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Representation Learning with Depth and Breadth for Recommendation Using Multi-view Data

机译:深度和广度的表示学习,以使用多视图数据进行推荐

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摘要

Recommender system has been well investigated in the past years. However, the typical representative CF-like models often give recommendation with low accuracy when the interaction information between users and items are sparse. To address the practical issue, in this paper we develop a novel Representation Learning with Depth and Breadth (RLDB) model for better recommendation Specifically, we design a heterogeneous network embedding method and convolutional neural network based method to learn feature representations of users and items from user-item interaction structure and review texts, respectively. Furthermore, an end-to-end breadth learning model is proposed through employing multi-view machine technique to learn features and fuse these diverse types of features in a uniform framework. Extensive experiments clearly demonstrates that our model outperforms all the other methods in these datasets.
机译:推荐系统在过去的几年中得到了很好的研究。但是,当用户和项目之间的交互信息稀疏时,典型的典型CF类模型通常会以较低的准确性给出推荐。为了解决实际问题,本文开发了一种新颖的深度和广度表示学习(RLDB)模型以提供更好的建议。特别是,我们设计了一种异构网络嵌入方法和基于卷积神经网络的方法,以从中学习用户和物品的特征表示用户项目互动结构和评论文本。此外,通过采用多视图机器技术来学习特征并将这些不同类型的特征融合在一个统一的框架中,提出了端到端的广度学习模型。大量实验清楚地表明,我们的模型优于这些数据集中的所有其他方法。

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