Learning with Linear Mixed Model for Group Recommendation Systems

Accurate prediction of users' responses to items is one of the main aims of many computational advising applications. Examples include recommending movies, news articles, songs, jobs, clothes, books and so forth. Accurate prediction of inactive users' responses still remains a challenging problem for many applications. In this paper, we explore the linear mixed model in recommendation system. The recommendation process is naturally modelled as the mixed process between objective effects (fixed effects) and subjective effects (random effects). The latent association between the subjective effects and the users' responses can be mined through the restricted maximum likelihood method. It turns out the linear mixed models can collaborate items' attributes and users' characteristics naturally and effectively. While this model cannot produce the most precisely individual level personalized recommendation, it is relative fast and accurate for group (users)/class (items) recommendation. Numerical examples on GroupLens benchmark problems are presented to show the effectiveness of this method.

[1]  Eleazar Eskin,et al.  Improved linear mixed models for genome-wide association studies , 2012, Nature Methods.

[2]  Lei Guo,et al.  Exploiting Pre-Trained Network Embeddings for Recommendations in Social Networks , 2018, Journal of Computer Science and Technology.

[3]  M. Stephens,et al.  Genome-wide Efficient Mixed Model Analysis for Association Studies , 2012, Nature Genetics.

[4]  Daniel E. Runcie,et al.  Fast and flexible linear mixed models for genome-wide genetics , 2018, bioRxiv.

[5]  Zhendong Mao,et al.  Knowledge Graph Embedding: A Survey of Approaches and Applications , 2017, IEEE Transactions on Knowledge and Data Engineering.

[6]  Robin Thompson,et al.  ASREML user guide release 1.0 , 2002 .

[7]  Deepak Agarwal,et al.  GLMix: Generalized Linear Mixed Models For Large-Scale Response Prediction , 2016, KDD.

[8]  Shengxin Zhu,et al.  Essential formulae for restricted maximum likelihood and its derivatives associated with the linear mixed models , 2018, 1805.05188.

[9]  Shayle R. Searle,et al.  Linear Models for Unbalanced Data. , 1990 .

[10]  Bruce Krulwich Intelligent User Profiling Using Large-Scale Demographic Data1 , 1997 .

[11]  Xingping Liu,et al.  Information Matrix Splitting , 2016 .

[12]  Per B. Brockhoff,et al.  lmerTest Package: Tests in Linear Mixed Effects Models , 2017 .

[13]  Guillermo Jiménez-Díaz,et al.  Social factors in group recommender systems , 2013, TIST.

[14]  Bruce Krulwich,et al.  LIFESTYLE FINDER: Intelligent User Profiling Using Large-Scale Demographic Data , 1997, AI Mag..

[15]  Shengxin Zhu,et al.  Fast calculation of restricted maximum likelihood methods for unstructured high-throughput data , 2017, 2017 IEEE 2nd International Conference on Big Data Analysis (ICBDA)(.

[16]  Xiaowen Xu,et al.  Information Splitting for Big Data Analytics , 2016, 2016 International Conference on Cyber-Enabled Distributed Computing and Knowledge Discovery (CyberC).

[17]  Yanchi Liu,et al.  A Generative Model Approach for Geo-Social Group Recommendation , 2018, Journal of Computer Science and Technology.

[18]  Fangfang Li,et al.  Two-level matrix factorization for recommender systems , 2015, Neural Computing and Applications.