Matrix factorization (MS) is a collaborative filtering (CF) based approach, which is widely used for recommendation systems (RS). In this research work, we deal with the content recommendation problem for users in a content management system (CMS) based on users' feedback data. The CMS is applied for publishing and pushing curated content to the employees of a company or an organization. Here, we have used the user's feedback data and content data to solve the content recommendation problem. We prepare individual user profiles and then generate recommendation results based on different categories, including Direct Interaction, Social Share, and Reading Statistics, of user's feedback data. Subsequently, we analyze the effect of the different categories on the recommendation results. The results have shown that different categories of feedback data have different impacts on recommendation accuracy. The best performance achieves if we include all types of data for the recommendation task. We also incorporate content similarity as a regularization term into an MF model for designing a hybrid model. Experimental results have shown that the proposed hybrid model demonstrates better performance compared with the traditional MF-based models.
翻译:矩阵要素化(MS)是一种基于合作过滤(CF)的方法,广泛用于建议系统。在这项研究工作中,我们处理基于用户反馈数据的内容管理系统(CMS)用户在内容管理系统(CMS)中的内容建议问题。 CMS用于向公司或组织的雇员发布和推介内容。在这里,我们使用用户反馈数据和内容数据来解决内容建议问题。我们编制个人用户概况,然后根据不同类别,包括直接互动、社会共享和阅读统计数据,得出用户反馈数据的建议结果。随后,我们分析不同类别对建议结果的影响。结果显示,不同类别的反馈数据对建议准确性有不同影响。如果我们将所有类型的数据纳入建议任务,那么最佳绩效就会实现。我们还将内容作为规范术语纳入设计混合模型的MF模型中。实验结果表明,拟议的混合模型与传统的MF模型相比表现更好。