计算机科学
推荐系统
社会化媒体
在线社区
非负矩阵分解
社交网络(社会语言学)
用户信息
基线(sea)
万维网
独创性
矩阵分解
情报检索
信息系统
心理学
工程类
物理
特征向量
地质学
电气工程
海洋学
社会心理学
量子力学
创造力
作者
Hangzhou Yang,Huiying Gao
出处
期刊:Internet Research
[Emerald (MCB UP)]
日期:2021-08-24
卷期号:31 (6): 2190-2218
被引量:12
标识
DOI:10.1108/intr-09-2020-0501
摘要
Purpose Online health communities (OHCs) are platforms that help health consumers to communicate with each other and obtain social support for better healthcare outcomes. However, it is usually difficult for community members to efficiently find appropriate peers for social support exchange due to the tremendous volume of users and their generated content. Most of the existing user recommendation systems fail to effectively utilize the rich social information in social media, which can lead to unsatisfactory recommendation performance. The purpose of this study is to propose a novel user recommendation method for OHCs to fill this research gap. Design/methodology/approach This study proposed a user recommendation method that utilized the adapted matrix factorization (MF) model. The implicit user behavior networks and the user influence relationship (UIR) network were constructed using the various social information found in OHCs, including user-generated content (UGC), user profiles and user interaction records. An experiment was conducted to evaluate the effectiveness of the proposed approach based on a dataset collected from a famous online health community. Findings The experimental results demonstrated that the proposed method outperformed all baseline models in user recommendation using the collected dataset. The incorporation of social information from OHCs can significantly improve the performance of the proposed recommender system. Practical implications This study can help users build valuable social connections efficiently, enhance communication among community members, and potentially contribute to the sustainable prosperity of OHCs. Originality/value This study introduces the construction of the UIR network in OHCs by integrating various social information. The conventional MF model is adapted by integrating the constructed UIR network for user recommendation.
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