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A Deep Hybrid Model for Recommendation by jointly leveraging ratings, reviews and metadata information

机译:共同利用评级,评论和元数据信息的建议深度混合模型

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摘要

Although matrix factorization (MF) based collaborative filtering (CF) and deep learning approaches have achieved great success, there is still much room for improvement in recommender systems. Most of the existing approaches mainly adopt product ratings, reviews or content features in order to predict unknown rating for a user-item pair. In the discourse matter, some recent works attempted to obtain better latent representations of users and items by integrating different multi-source data, however, the heterogeneity of data is still a problem deserving study. Such models usually face two issues: (1) They extract the representations in a static and independent manner, thus ignoring the correlations between latent features learned from different information sources. (2) There is no unified framework that can mutually learn latent features from different sources such as ratings, reviews and meta-data of users, items and reviews. In the proposed model, called A Deep Hybrid Model for Recommendation (DHMR), we propose a joint deep model for learning higher-order non-linear latent feature interactions from reviews and metadata information. Further, we incorporate user-item interactions (from user-item ratings matrix) adopting MF model into the neural network. Thus, the proposed model consists of two parallel neural networks and an MF based model that are integrated by the attention and MLP layers at the top, learning lower-order (linear and non-linear) feature interactions of users and items separately and higher-order non-linear feature interactions jointly. Extensive experiments on real-world datasets demonstrate that DHMR significantly outperforms state-of-the-art recommendation models.
机译:虽然基于矩阵分解(MF)的协作滤波(CF)和深度学习方法取得了巨大的成功,但仍然有很多改进推荐系统的空间。大多数现有方法主要采用产品评级,评论或内容特征,以预测用户项对的未知评级。在话语问题中,最近的一些作品通过集成不同的多源数据来获得用户和项目的更好的潜在表示,但是,数据的异质性仍然是一个值得研究的问题。此类模型通常面临两个问题:(1)它们以静态和独立的方式提取表示,从而忽略了从不同信息源中学到的潜在特征之间的相关性。 (2)没有统一的框架,可以相互学习来自不同来源的潜在功能,例如用户,项目和评论的评级,评论和元数据等。在拟议的模型中,称为深度混合模型的建议(DHMR),我们提出了一种从评论和元数据信息学习高阶非线性潜在的相互作用的联合深度模型。此外,我们将使用MF模型的用户项目交互(从用户项评级矩阵)纳入神经网络。因此,所提出的模型由两个并行神经网络和基于MF的模型组成,该模型由顶部的注意力和MLP层集成,学习低阶(线性和非线性)分别和项目的特征交互和更高 - 订购非线性特征交互联合。关于现实世界数据集的广泛实验表明,DHMR显着优于最先进的推荐模型。

著录项

  • 来源
    《Engineering Applications of Artificial Intelligence》 |2021年第1期|104066.1-104066.12|共12页
  • 作者单位

    School of Computer Science and Technology Beijing Institute of Technology Beijing China Department of Computer Science and Information Technology University of Azad Jammu and Kashmir Muzaffarabad Pakistan;

    School of Computer Science and Technology Beijing Institute of Technology Beijing China School of Computing and Information University of Pittsburgh Pittsburgh PA USA;

    School of Computer Science and Technology Beijing Institute of Technology Beijing China Department of Computer Science and Engineering The University of Dodoma Tanzania;

    School of Computer Science and Technology Beijing Institute of Technology Beijing China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Convolutional neural network; Recommender systems; Metadata; Rating prediction; E-learning; Reviews;

    机译:卷积神经网络;推荐系统;元数据;评定预测;电子学习;评论;

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