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Improving performance of tensor-based context-aware recommenders using Bias Tensor Factorization with context feature auto-encoding

Authors :
Qiuxia Sun
Jianli Zhao
Wenmin Wu
Yang Zhang
Meng Fang
Zeli Zhang
Zhang Chunsheng
Source :
Knowledge-Based Systems. 128:71-77
Publication Year :
2017
Publisher :
Elsevier BV, 2017.

Abstract

In this paper, we focus on the problem of context-aware recommendation using tensor factorization. Traditional tensor-based models in context-aware recommendation scenario only consider user-item-context interactions. In this paper, we argue that rating can't be totally explained by the interactions and the rating also influenced by the combined impact of overall mean, user bias, item bias and context bias. Based on this hypothesis, we propose a novel context-aware recommendation model named Bias Tensor Factorization, which take all this factors into account. Additionally, traditional context-aware recommenders with tensor factorization still have three main drawbacks: (1) the model complexity of those models increase exponentially with the number of context features, (2) those models can only handle context features with categorical values and (3) the models fail to select effective features from available context features. To address those problems, we propose a context features auto-encoding algorithm based on regression tree which can both handle numerical features and select effective features. Then we integrate this algorithm with Bias Tensor Factorization. Experiments on a real world contextual dataset and Movielens show that our proposed algorithms outperform the state-of-art context-aware recommendation algorithms, namely tensor factorization and factorization machine.

Details

ISSN :
09507051
Volume :
128
Database :
OpenAIRE
Journal :
Knowledge-Based Systems
Accession number :
edsair.doi...........78ac637c80cd1addd2363748ed549490