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Personalized Federated Recommender Systems with Private and Partially Federated AutoEncoders

Publication ,  Conference
Le, Q; Diao, E; Wang, X; Anwar, A; Tarokh, V; Ding, J
Published in: Conference Record - Asilomar Conference on Signals, Systems and Computers
January 1, 2022

Recommender Systems (RSs) have become increasingly important in many application domains, such as digital marketing. Conventional RSs often need to collect users' data, centralize them on the server-side, and form a global model to generate reliable recommendations. However, they suffer from two critical limitations: the personalization problem that the RSs trained traditionally may not be customized for individual users, and the privacy problem that directly sharing user data is not encouraged. We propose Personalized Federated Recommender Systems (PersonalFR), which introduces a personalized autoencoder-based recommendation model with Federated Learning (FL) to address these challenges. PersonalFR guarantees that each user can learn a personal model from the local dataset and other participating users' data without sharing local data, data embeddings, or models. PersonalFR consists of three main components, including AutoEncoder-based RSs (ARSs) that learn the user-item interactions, Partially Federated Learning (PFL) that updates the encoder locally and aggregates the decoder on the server-side, and Partial Compression (PC) that only computes and transmits active model parameters. Extensive experiments on two real-world datasets demonstrate that PersonalFR can achieve private and personalized performance comparable to that trained by centralizing all users' data. Moreover, PersonalFR requires significantly less computation and communication overhead than standard FL baselines.

Duke Scholars

Published In

Conference Record - Asilomar Conference on Signals, Systems and Computers

DOI

ISSN

1058-6393

Publication Date

January 1, 2022

Volume

2022-October

Start / End Page

1157 / 1163
 

Citation

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Le, Q., Diao, E., Wang, X., Anwar, A., Tarokh, V., & Ding, J. (2022). Personalized Federated Recommender Systems with Private and Partially Federated AutoEncoders. In Conference Record - Asilomar Conference on Signals, Systems and Computers (Vol. 2022-October, pp. 1157–1163). https://doi.org/10.1109/IEEECONF56349.2022.10051918
Le, Q., E. Diao, X. Wang, A. Anwar, V. Tarokh, and J. Ding. “Personalized Federated Recommender Systems with Private and Partially Federated AutoEncoders.” In Conference Record - Asilomar Conference on Signals, Systems and Computers, 2022-October:1157–63, 2022. https://doi.org/10.1109/IEEECONF56349.2022.10051918.
Le Q, Diao E, Wang X, Anwar A, Tarokh V, Ding J. Personalized Federated Recommender Systems with Private and Partially Federated AutoEncoders. In: Conference Record - Asilomar Conference on Signals, Systems and Computers. 2022. p. 1157–63.
Le, Q., et al. “Personalized Federated Recommender Systems with Private and Partially Federated AutoEncoders.” Conference Record - Asilomar Conference on Signals, Systems and Computers, vol. 2022-October, 2022, pp. 1157–63. Scopus, doi:10.1109/IEEECONF56349.2022.10051918.
Le Q, Diao E, Wang X, Anwar A, Tarokh V, Ding J. Personalized Federated Recommender Systems with Private and Partially Federated AutoEncoders. Conference Record - Asilomar Conference on Signals, Systems and Computers. 2022. p. 1157–1163.

Published In

Conference Record - Asilomar Conference on Signals, Systems and Computers

DOI

ISSN

1058-6393

Publication Date

January 1, 2022

Volume

2022-October

Start / End Page

1157 / 1163