News recommendations based on collaborative topic modeling and collaborative filtering with generative adversarial networks

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Duen-Ren Liu, Yang Huang, Jhen-Jie Jhao, Shin-Jye Lee
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引用次数: 0

Abstract

PurposeOnline news websites provide huge amounts of timely news, bringing the challenge of recommending personalized news articles. Generative adversarial networks (GAN) based on collaborative filtering (CFGAN) can achieve effective recommendation quality. However, CFGAN ignores item contents, which contain more latent preference features than just user ratings. It is important to consider both ratings and item contents in making preference predictions. This study aims to improve news recommendation by proposing a GAN-based news recommendation model considering both ratings (implicit feedback) and the latent features of news content.Design/methodology/approachThe collaborative topic modeling (CTM) can improve user preference prediction by combining matrix factorization (MF) with latent topics of item content derived from latent topic modeling. This study proposes a novel hybrid news recommendation model, Hybrid-CFGAN, which modifies the architecture of the CFGAN model with enhanced preference learning from the CTM. The proposed Hybrid-CFGAN model contains parallel neural networks – original rating-based preference learning and CTM-based preference learning, which consider both ratings and news content with user preferences derived from the CTM model. A tunable parameter is used to adjust the weights of the two preference learnings, while concatenating the preference outputs of the two parallel neural networks.FindingsThis study uses the dataset collected from an online news website, NiusNews, to conduct an experimental evaluation. The results show that the proposed Hybrid-CFGAN model can achieve better performance than the state-of-the-art GAN-based recommendation methods. The proposed novel Hybrid-CFGAN model can enhance existing GAN-based recommendation and increase the performance of preference predictions on textual content such as news articles.Originality/valueAs the existing CFGAN model does not consider content information and solely relies on history logs, it may not be effective in recommending news articles. Our proposed Hybrid-CFGAN model modified the architecture of the CFGAN generator by adding a parallel neural network to gain the relevant information from news content and user preferences derived from the CTM model. The novel idea of adjusting the preference learning from two parallel neural networks – original rating-based preference learning and CTM-based preference learning – contributes to improve the recommendation quality of the proposed model by considering both ratings and latent preferences derived from item contents. The proposed novel recommendation model can improve news recommendation, thereby increasing the commercial value of news media platforms.
基于协同主题建模和生成对抗网络协同过滤的新闻推荐
目的在线新闻网站提供了大量及时的新闻,带来了个性化新闻文章推荐的挑战。基于协同过滤(CFGAN)的生成式对抗网络(GAN)可以达到有效的推荐质量。然而,CFGAN忽略了项目内容,其中包含比用户评分更多的潜在偏好特征。在进行偏好预测时,同时考虑评分和项目内容是很重要的。本研究旨在通过提出一种基于gan的新闻推荐模型,同时考虑新闻内容的评级(隐式反馈)和潜在特征,从而改进新闻推荐。设计/方法/方法协同主题建模(CTM)将矩阵分解(MF)与潜在主题建模衍生的项目内容潜在主题相结合,提高了用户偏好预测的精度。本文提出了一种新的混合新闻推荐模型hybrid -CFGAN,该模型改进了CFGAN模型的结构,增强了对CTM的偏好学习。提出的Hybrid-CFGAN模型包含并行神经网络-基于原始评级的偏好学习和基于CTM的偏好学习,它们同时考虑评级和新闻内容以及从CTM模型派生的用户偏好。在连接两个并行神经网络的偏好输出时,使用一个可调参数来调整两个偏好学习的权重。本研究使用在线新闻网站NiusNews收集的数据集进行实验评估。结果表明,所提出的Hybrid-CFGAN模型比目前基于gan的推荐方法具有更好的性能。提出的新型Hybrid-CFGAN模型可以增强现有的基于gan的推荐,并提高对文本内容(如新闻文章)的偏好预测性能。原创性/价值由于现有的CFGAN模型不考虑内容信息,仅依赖历史日志,因此可能无法有效推荐新闻文章。我们提出的Hybrid-CFGAN模型修改了CFGAN生成器的架构,通过添加一个并行神经网络从CTM模型衍生的新闻内容和用户偏好中获取相关信息。利用基于原始评分的偏好学习和基于ctm的偏好学习这两个并行神经网络调整偏好学习的新思想,通过同时考虑来自项目内容的评分和潜在偏好,有助于提高所提出模型的推荐质量。本文提出的新推荐模型可以改进新闻推荐,从而提高新闻媒体平台的商业价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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