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Autores principales: Zhang, Chunxu, Long, Guodong, Guo, Hongkuan, Fang, Xiao, Song, Yang, Liu, Zhaojie, Zhou, Guorui, Zhang, Zijian, Liu, Yang, Yang, Bo
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2405.04840
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author Zhang, Chunxu
Long, Guodong
Guo, Hongkuan
Fang, Xiao
Song, Yang
Liu, Zhaojie
Zhou, Guorui
Zhang, Zijian
Liu, Yang
Yang, Bo
author_facet Zhang, Chunxu
Long, Guodong
Guo, Hongkuan
Fang, Xiao
Song, Yang
Liu, Zhaojie
Zhou, Guorui
Zhang, Zijian
Liu, Yang
Yang, Bo
contents With the recent success of large language models, particularly foundation models with generalization abilities, applying foundation models for recommendations becomes a new paradigm to improve existing recommendation systems. It becomes a new open challenge to enable the foundation model to capture user preference changes in a timely manner with reasonable communication and computation costs while preserving privacy. This paper proposes a novel federated adaptation mechanism to enhance the foundation model-based recommendation system in a privacy-preserving manner. Specifically, each client will learn a lightweight personalized adapter using its private data. The adapter then collaborates with pre-trained foundation models to provide recommendation service efficiently with fine-grained manners. Importantly, users' private behavioral data remains secure as it is not shared with the server. This data localization-based privacy preservation is embodied via the federated learning framework. The model can ensure that shared knowledge is incorporated into all adapters while simultaneously preserving each user's personal preferences. Experimental results on four benchmark datasets demonstrate our method's superior performance. Implementation code is available to ease reproducibility.
format Preprint
id arxiv_https___arxiv_org_abs_2405_04840
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Federated Adaptation for Foundation Model-based Recommendations
Zhang, Chunxu
Long, Guodong
Guo, Hongkuan
Fang, Xiao
Song, Yang
Liu, Zhaojie
Zhou, Guorui
Zhang, Zijian
Liu, Yang
Yang, Bo
Information Retrieval
With the recent success of large language models, particularly foundation models with generalization abilities, applying foundation models for recommendations becomes a new paradigm to improve existing recommendation systems. It becomes a new open challenge to enable the foundation model to capture user preference changes in a timely manner with reasonable communication and computation costs while preserving privacy. This paper proposes a novel federated adaptation mechanism to enhance the foundation model-based recommendation system in a privacy-preserving manner. Specifically, each client will learn a lightweight personalized adapter using its private data. The adapter then collaborates with pre-trained foundation models to provide recommendation service efficiently with fine-grained manners. Importantly, users' private behavioral data remains secure as it is not shared with the server. This data localization-based privacy preservation is embodied via the federated learning framework. The model can ensure that shared knowledge is incorporated into all adapters while simultaneously preserving each user's personal preferences. Experimental results on four benchmark datasets demonstrate our method's superior performance. Implementation code is available to ease reproducibility.
title Federated Adaptation for Foundation Model-based Recommendations
topic Information Retrieval
url https://arxiv.org/abs/2405.04840