A Model-agnostic Strategy to Mitigate Embedding Degradation in Personalized Federated Recommendation
- URL: http://arxiv.org/abs/2508.19591v1
- Date: Wed, 27 Aug 2025 06:03:52 GMT
- Title: A Model-agnostic Strategy to Mitigate Embedding Degradation in Personalized Federated Recommendation
- Authors: Jiakui Shen, Yunqi Mi, Guoshuai Zhao, Jialie Shen, Xueming Qian,
- Abstract summary: We propose a novel model-agnostic strategy for FedRec to strengthen the personalized embedding utility.<n>PLGC is the first research in federated recommendation to alleviate the dimensional collapse issue.
- Score: 34.915843795521134
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Centralized recommender systems encounter privacy leakage due to the need to collect user behavior and other private data. Hence, federated recommender systems (FedRec) have become a promising approach with an aggregated global model on the server. However, this distributed training paradigm suffers from embedding degradation caused by suboptimal personalization and dimensional collapse, due to the existence of sparse interactions and heterogeneous preferences. To this end, we propose a novel model-agnostic strategy for FedRec to strengthen the personalized embedding utility, which is called Personalized Local-Global Collaboration (PLGC). It is the first research in federated recommendation to alleviate the dimensional collapse issue. Particularly, we incorporate the frozen global item embedding table into local devices. Based on a Neural Tangent Kernel strategy that dynamically balances local and global information, PLGC optimizes personalized representations during forward inference, ultimately converging to user-specific preferences. Additionally, PLGC carries on a contrastive objective function to reduce embedding redundancy by dissolving dependencies between dimensions, thereby improving the backward representation learning process. We introduce PLGC as a model-agnostic personalized training strategy for federated recommendations that can be applied to existing baselines to alleviate embedding degradation. Extensive experiments on five real-world datasets have demonstrated the effectiveness and adaptability of PLGC, which outperforms various baseline algorithms.
Related papers
- Replacing Parameters with Preferences: Federated Alignment of Heterogeneous Vision-Language Models [63.70401095689976]
We argue that replacing parameters with preferences represents a more scalable and privacy-preserving future.<n>We propose MoR, a federated alignment framework based on GRPO with Mixture-of-Rewards for heterogeneous VLMs.<n>MoR consistently outperforms federated alignment baselines in generalization, robustness, and cross-client adaptability.
arXiv Detail & Related papers (2026-01-31T03:11:51Z) - Closing the Generalization Gap in Parameter-efficient Federated Edge Learning [43.00634399799955]
Federated edge learning (FEEL) provides a promising foundation for artificial intelligence (AI)<n>limited and heterogeneous local datasets, as well as resource-constrained deployment, severely degrade both model generalization and resource utilization.<n>We propose a framework that jointly leverages model minimization and generalization selection to tackle such challenges.
arXiv Detail & Related papers (2025-11-28T15:34:09Z) - Towards Federated Clustering: A Client-wise Private Graph Aggregation Framework [57.04850867402913]
Federated clustering addresses the challenge of extracting patterns from decentralized, unlabeled data.<n>We propose Structural Privacy-Preserving Federated Graph Clustering (SPP-FGC), a novel algorithm that innovatively leverages local structural graphs as the primary medium for privacy-preserving knowledge sharing.<n>Our framework achieves state-of-the-art performance, improving clustering accuracy by up to 10% (NMI) over federated baselines while maintaining provable privacy guarantees.
arXiv Detail & Related papers (2025-11-14T03:05:22Z) - CO-PFL: Contribution-Oriented Personalized Federated Learning for Heterogeneous Networks [51.43780477302533]
Contribution-Oriented PFL (CO-PFL) is a novel algorithm that dynamically estimates each client's contribution for global aggregation.<n>CO-PFL consistently surpasses state-of-the-art methods in robustness in personalization accuracy, robustness, scalability and convergence stability.
arXiv Detail & Related papers (2025-10-23T05:10:06Z) - STT-GS: Sample-Then-Transmit Edge Gaussian Splatting with Joint Client Selection and Power Control [77.56170394100022]
Edge Gaussian splatting (EGS) aggregates data from distributed clients and trains a global GS model at the edge server.<n>This paper formulates a novel GS-oriented objective function that distinguishes the view contributions of different clients.<n>It is found that the GS-oriented objective can be accurately predicted with low sampling ratios.
arXiv Detail & Related papers (2025-10-15T06:20:47Z) - Heterogeneous Self-Supervised Acoustic Pre-Training with Local Constraints [64.15709757611369]
We propose a new self-supervised pre-training approach to dealing with heterogeneous data.<n>The proposed approach can significantly improve the adaptivity of the self-supervised pre-trained model for the downstream supervised fine-tuning tasks.
arXiv Detail & Related papers (2025-08-27T15:48:50Z) - Beyond Personalization: Federated Recommendation with Calibration via Low-rank Decomposition [18.323509259364908]
Federated recommendation (FR) is a promising paradigm to protect user privacy in recommender systems.<n>We empirically find that globally aggregated item embeddings can induce skew in user embeddings, resulting in suboptimal performance.<n>We propose PFedCLR to mitigate user embedding skew and achieves a desirable trade-off among performance, efficiency, and privacy.
arXiv Detail & Related papers (2025-06-11T08:51:19Z) - Embed Progressive Implicit Preference in Unified Space for Deep Collaborative Filtering [13.24227546548424]
Generalized Neural Ordinal Logistic Regression (GNOLR) is proposed to capture the structured progression of user engagement.<n>GNOLR enhances predictive accuracy, captures the progression of user engagement, and simplifies the retrieval process.<n>Experiments on ten real-world datasets show that GNOLR significantly outperforms state-of-the-art methods in efficiency and adaptability.
arXiv Detail & Related papers (2025-05-27T08:43:35Z) - Efficient and Robust Regularized Federated Recommendation [52.24782464815489]
The recommender system (RSRS) addresses both user preference and privacy concerns.
We propose a novel method that incorporates non-uniform gradient descent to improve communication efficiency.
RFRecF's superior robustness compared to diverse baselines.
arXiv Detail & Related papers (2024-11-03T12:10:20Z) - Towards Federated Low-Rank Adaptation of Language Models with Rank Heterogeneity [12.515874333424929]
We observe that heterogeneous ranks among clients lead to unstable performance.<n>Our analysis attributes this instability to the conventional zero-padding aggregation strategy.<n>We propose a replication-based padding strategy that better retains valuable information from clients with high-quality data.
arXiv Detail & Related papers (2024-06-25T11:49:33Z) - Decentralized Directed Collaboration for Personalized Federated Learning [39.29794569421094]
We concentrate on the Decentralized Personalized Learning (DPFL) that performs distributed training model computation.
We propose a directed collaboration framework by incorporating textbfDecentralized textbfFederated textbfPartial textbfGradient textbfPedGP.
arXiv Detail & Related papers (2024-05-28T06:52:19Z) - APGL4SR: A Generic Framework with Adaptive and Personalized Global
Collaborative Information in Sequential Recommendation [86.29366168836141]
We propose a graph-driven framework, named Adaptive and Personalized Graph Learning for Sequential Recommendation (APGL4SR)
APGL4SR incorporates adaptive and personalized global collaborative information into sequential recommendation systems.
As a generic framework, APGL4SR can outperform other baselines with significant margins.
arXiv Detail & Related papers (2023-11-06T01:33:24Z) - Dynamic Regularized Sharpness Aware Minimization in Federated Learning: Approaching Global Consistency and Smooth Landscape [59.841889495864386]
In federated learning (FL), a cluster of local clients are chaired under the coordination of a global server.
Clients are prone to overfit into their own optima, which extremely deviates from the global objective.
ttfamily FedSMOO adopts a dynamic regularizer to guarantee the local optima towards the global objective.
Our theoretical analysis indicates that ttfamily FedSMOO achieves fast $mathcalO (1/T)$ convergence rate with low bound generalization.
arXiv Detail & Related papers (2023-05-19T10:47:44Z) - FedLAP-DP: Federated Learning by Sharing Differentially Private Loss Approximations [53.268801169075836]
We propose FedLAP-DP, a novel privacy-preserving approach for federated learning.
A formal privacy analysis demonstrates that FedLAP-DP incurs the same privacy costs as typical gradient-sharing schemes.
Our approach presents a faster convergence speed compared to typical gradient-sharing methods.
arXiv Detail & Related papers (2023-02-02T12:56:46Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.