Authors
Anas Alzogbi, Polina Koleva, Georg Lausen
Publication date
2019/4/8
Conference
2019 IEEE 35th International Conference on Data Engineering Workshops (ICDEW)
Pages
193-200
Publisher
IEEE
Description
Model-based approaches for Content-based Filtering (CBF) recommendation have the potential of generating representative users models owing to their ability to learn from users actions. However, the need for training an individual model for each user leads to a scalability issue and brings a high computational cost that contributes to the limited adaptation of model-based approaches as efficient CBF recommenders. This is particularly relevant for production systems where the recommender is expected to serve a large number of users. In this work, we address the efficiency issue of model-based CBF recommender systems and present a new approach for distributed multi-model learning based on Apache Spark. We use Ranking SVM as the underlying recommendation algorithm and present a distributed implementation that allows efficient training of multiple models in parallel using a collection of machines. We …
Total citations
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Scholar articles
A Alzogbi, P Koleva, G Lausen - 2019 IEEE 35th International Conference on Data …, 2019