Title
Topic-based hierarchical Bayesian linear regression models for niche items recommendation
Abstract
AbstractA vital research concern for a personalised recommender system is to target items in the long tail. Studies have shown that sales of the e-commerce platform possess a long-tail character, and niche items in the long tail are challenging to be involved in the recommendation list. Since niche items are defined by the niche market, which is a small market segment, traditional recommendation algorithms focused more on popular items promotion and they do not apply to the niche market. In this article, we aim to find the best users for each niche item and proposed a topic-based hierarchical Bayesian linear regression model for niche item recommendation. We first identify niche items and build niche item subgroups based on descriptive information of items. Moreover, we learn a hierarchical Bayesian linear regression model for each niche item subgroup. Finally, we predict the relevance between users and niche items to provide recommendations. We perform a series of validation experiments on Yahoo Movies dataset and compare the performance of our approach with a set of representative baseline recommender algorithms. The result demonstrates the superior performance of our recommendation approach for niche items.
Year
DOI
Venue
2019
10.1177/0165551518782831
Periodicals
Keywords
Field
DocType
Expectation-maximisation algorithm,hierarchical Bayesian linear regression models,niche item recommendation,personalised recommendation
Recommender system,Market segmentation,Information retrieval,Computer science,Bayesian linear regression,Long tail,Niche,Niche market
Journal
Volume
Issue
ISSN
45
1
0165-5515
Citations 
PageRank 
References 
0
0.34
15
Authors
6
Name
Order
Citations
PageRank
Yezheng Liu114524.69
Qiang Xiong200.34
Jianshan Sun319217.65
Yuanchun Jiang418421.24
Thushari Silva5365.87
Haifeng Ling621010.52