HeteFedRec: Federated Recommender Systems with Model Heterogeneity

07/24/2023
by   Wei Yuan, et al.
0

Owing to the nature of privacy protection, federated recommender systems (FedRecs) have garnered increasing interest in the realm of on-device recommender systems. However, most existing FedRecs only allow participating clients to collaboratively train a recommendation model of the same public parameter size. Training a model of the same size for all clients can lead to suboptimal performance since clients possess varying resources. For example, clients with limited training data may prefer to train a smaller recommendation model to avoid excessive data consumption, while clients with sufficient data would benefit from a larger model to achieve higher recommendation accuracy. To address the above challenge, this paper introduces HeteFedRec, a novel FedRec framework that enables the assignment of personalized model sizes to participants. In HeteFedRec, we present a heterogeneous recommendation model aggregation strategy, including a unified dual-task learning mechanism and a dimensional decorrelation regularization, to allow knowledge aggregation among recommender models of different sizes. Additionally, a relation-based ensemble knowledge distillation method is proposed to effectively distil knowledge from heterogeneous item embeddings. Extensive experiments conducted on three real-world recommendation datasets demonstrate the effectiveness and efficiency of HeteFedRec in training federated recommender systems under heterogeneous settings.

READ FULL TEXT
research
02/10/2022

FedAttack: Effective and Covert Poisoning Attack on Federated Recommendation via Hard Sampling

Federated learning (FL) is a feasible technique to learn personalized re...
research
10/21/2021

PipAttack: Poisoning Federated Recommender Systems forManipulating Item Promotion

Due to the growing privacy concerns, decentralization emerges rapidly in...
research
03/06/2023

Towards Capacity-Aware Broker Matching: From Recommendation to Assignment

Online real estate platforms are gaining increasing popularity, where a ...
research
04/23/2022

On-Device Next-Item Recommendation with Self-Supervised Knowledge Distillation

Modern recommender systems operate in a fully server-based fashion. To c...
research
06/12/2021

Curriculum Pre-Training Heterogeneous Subgraph Transformer for Top-N Recommendation

Due to the flexibility in modelling data heterogeneity, heterogeneous in...
research
08/24/2023

Towards Communication-Efficient Model Updating for On-Device Session-Based Recommendation

On-device recommender systems recently have garnered increasing attentio...
research
08/14/2022

Forgetting Fast in Recommender Systems

Users of a recommender system may want part of their data being deleted,...

Please sign up or login with your details

Forgot password? Click here to reset