Fast ALS-based tensor factorization for context-aware recommendation from implicit feedback
Bal\'azs Hidasi, Domonkos Tikk

TL;DR
This paper introduces iTALS, a scalable ALS-based tensor factorization algorithm for implicit feedback recommendation that effectively incorporates diverse contextual information, improving recommendation quality on multiple datasets.
Contribution
The paper presents iTALS, a novel, efficient tensor factorization method for implicit feedback that integrates context-awareness, addressing scalability and contextual modeling challenges.
Findings
iTALS scales linearly with non-zero tensor elements
Context-aware variants improve recommendation accuracy
Effective on proprietary and Netflix datasets
Abstract
Albeit, the implicit feedback based recommendation problem - when only the user history is available but there are no ratings - is the most typical setting in real-world applications, it is much less researched than the explicit feedback case. State-of-the-art algorithms that are efficient on the explicit case cannot be straightforwardly transformed to the implicit case if scalability should be maintained. There are few if any implicit feedback benchmark datasets, therefore new ideas are usually experimented on explicit benchmarks. In this paper, we propose a generic context-aware implicit feedback recommender algorithm, coined iTALS. iTALS apply a fast, ALS-based tensor factorization learning method that scales linearly with the number of non-zero elements in the tensor. The method also allows us to incorporate diverse context information into the model while maintaining its…
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