Federated Multi-view Matrix Factorization for Personalized Recommendations
Flanagan, Adrian, Oyomno, Were, Grigorievskiy, Alexander, Tan, Kuan Eeik, Khan, Suleiman A., Ammad-Ud-Din, Muhammad
We introduce the federated multi-view matrix factorization method that extends the federated learning framework to matrix factorization with multiple data sources. Our method is able to learn the multi-view model without transferring the user's personal data to a central server. As far as we are aware this is the first federated model to provide recommendations using multi-view matrix factorization. The model is rigorously evaluated on three datasets on production settings. Empirical validation confirms that federated multi-view matrix factorization outperforms simpler methods that do not take into account the multi-view structure of the data, in addition, it demonstrates the usefulness of the proposed method for the challenging prediction tasks of cold-start federated recommendations.
Apr-8-2020
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- Research Report > New Finding (0.46)
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- Information Technology > Security & Privacy (1.00)
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