Toward a Sustainable Federated Learning Ecosystem: A Practical Least Core Mechanism for Payoff Allocation
- URL: http://arxiv.org/abs/2602.03387v1
- Date: Tue, 03 Feb 2026 11:10:50 GMT
- Title: Toward a Sustainable Federated Learning Ecosystem: A Practical Least Core Mechanism for Payoff Allocation
- Authors: Zhengwei Ni, Zhidu Li, Wei Chen, Zhaoyang Zhang, Zehua Wang, F. Richard Yu, Victor C. M. Leung,
- Abstract summary: We introduce a payoff allocation framework based on the least core (LC) concept.<n>Unlike traditional methods, the LC prioritizes the cohesion of the federation by minimizing the maximum dissatisfaction.<n>Case studies in federated intrusion detection demonstrate that our mechanism correctly identifies pivotal contributors and strategic alliances.
- Score: 71.86087908416255
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Emerging network paradigms and applications increasingly rely on federated learning (FL) to enable collaborative intelligence while preserving privacy. However, the sustainability of such collaborative environments hinges on a fair and stable payoff allocation mechanism. Focusing on coalition stability, this paper introduces a payoff allocation framework based on the least core (LC) concept. Unlike traditional methods, the LC prioritizes the cohesion of the federation by minimizing the maximum dissatisfaction among all potential subgroups, ensuring that no participant has an incentive to break away. To adapt this game-theoretic concept to practical, large-scale networks, we propose a streamlined implementation with a stack-based pruning algorithm, effectively balancing computational efficiency with allocation precision. Case studies in federated intrusion detection demonstrate that our mechanism correctly identifies pivotal contributors and strategic alliances. The results confirm that the practical LC framework promotes stable collaboration and fosters a sustainable FL ecosystem.
Related papers
- Resilient Federated Chain: Transforming Blockchain Consensus into an Active Defense Layer for Federated Learning [3.189189590825304]
This paper introduces Resilient Federated Chain (RFC), a novel blockchain-enabled Federated Learning framework.<n> RFC builds upon the existing Proof of Federated Learning architecture by repurposing the redundancy of its Pooled Mining mechanism.<n> RFC significantly improves robustness compared to baseline methods, providing a viable solution for securing decentralized learning environments.
arXiv Detail & Related papers (2026-02-25T12:20:47Z) - Federated Attention: A Distributed Paradigm for Collaborative LLM Inference over Edge Networks [63.541114376141735]
Large language models (LLMs) are proliferating rapidly at the edge, delivering intelligent capabilities across diverse application scenarios.<n>However, their practical deployment in collaborative scenarios confronts fundamental challenges: privacy vulnerabilities, communication overhead, and computational bottlenecks.<n>We propose Federated Attention (FedAttn), which integrates the federated paradigm into the self-attention mechanism.
arXiv Detail & Related papers (2025-11-04T15:14:58Z) - An Explainable Equity-Aware P2P Energy Trading Framework for Socio-Economically Diverse Microgrid [0.0]
This paper proposes a novel framework that integrates multi-objective mixed-integer linear programming (MILP), cooperative game theory, and a dynamic equity-adjustment mechanism driven by reinforcement learning (RL)<n>The framework demonstrates peak demand reductions of up to 72.6%, and significant cooperative gains.
arXiv Detail & Related papers (2025-07-24T18:38:51Z) - Resolving CAP Through Automata-Theoretic Economic Design: A Unified Mathematical Framework for Real-Time Partition-Tolerant Systems [0.0]
The CAP theorem asserts a trilemma between consistency, availability, and partition tolerance.<n>This paper introduces a rigorous automata-theoretic and economically grounded framework that reframes the CAP trade-off as a constraint optimization problem.
arXiv Detail & Related papers (2025-07-03T09:21:43Z) - Blockchain-based Framework for Scalable and Incentivized Federated Learning [0.820828081284034]
Federated Learning (FL) enables collaborative model training without sharing raw data, preserving privacy while harnessing distributed datasets.<n>Traditional FL systems often rely on centralized aggregating mechanisms, introducing trust issues, single points of failure, and limited mechanisms for incentivizing meaningful client contributions.<n>This paper presents a blockchain-based FL framework that addresses these limitations by integrating smart contracts and a novel hybrid incentive mechanism.
arXiv Detail & Related papers (2025-02-20T00:38:35Z) - A Safe Genetic Algorithm Approach for Energy Efficient Federated
Learning in Wireless Communication Networks [53.561797148529664]
Federated Learning (FL) has emerged as a decentralized technique, where contrary to traditional centralized approaches, devices perform a model training in a collaborative manner.
Despite the existing efforts made in FL, its environmental impact is still under investigation, since several critical challenges regarding its applicability to wireless networks have been identified.
The current work proposes a Genetic Algorithm (GA) approach, targeting the minimization of both the overall energy consumption of an FL process and any unnecessary resource utilization.
arXiv Detail & Related papers (2023-06-25T13:10:38Z) - Networked Communication for Decentralised Agents in Mean-Field Games [59.01527054553122]
We introduce networked communication to the mean-field game framework.<n>We prove that our architecture has sample guarantees bounded between those of the centralised- and independent-learning cases.<n>We show that our networked approach has significant advantages over both alternatives in terms of robustness to update failures and to changes in population size.
arXiv Detail & Related papers (2023-06-05T10:45:39Z) - Collaboration in Participant-Centric Federated Learning: A
Game-Theoretical Perspective [29.06665697241795]
Federated learning (FL) is a promising distributed framework for collaborative artificial intelligence model training.
A bootstrapping component that has attracted significant research attention is the design of incentive mechanism to stimulate user collaboration in FL.
Few works consider forging participant-centric collaboration among participants to pursue an FL model for their common interests.
We propose a novel analytic framework for incentivizing effective and efficient collaborations for participant-centric FL.
arXiv Detail & Related papers (2022-07-25T10:12:22Z) - Monotonic Improvement Guarantees under Non-stationarity for
Decentralized PPO [66.5384483339413]
We present a new monotonic improvement guarantee for optimizing decentralized policies in cooperative Multi-Agent Reinforcement Learning (MARL)
We show that a trust region constraint can be effectively enforced in a principled way by bounding independent ratios based on the number of agents in training.
arXiv Detail & Related papers (2022-01-31T20:39:48Z) - Finite-Time Consensus Learning for Decentralized Optimization with
Nonlinear Gossiping [77.53019031244908]
We present a novel decentralized learning framework based on nonlinear gossiping (NGO), that enjoys an appealing finite-time consensus property to achieve better synchronization.
Our analysis on how communication delay and randomized chats affect learning further enables the derivation of practical variants.
arXiv Detail & Related papers (2021-11-04T15:36:25Z) - Bayesian Variational Federated Learning and Unlearning in Decentralized
Networks [37.62407138487514]
This paper studies federated learning and unlearning in a decentralized network within a Bayesian framework.
It specifically develops federated variational inference (VI) solutions based on the decentralized solution of local free energy minimization problems.
arXiv Detail & Related papers (2021-04-08T15:18:35Z) - Decentralized Reinforcement Learning: Global Decision-Making via Local
Economic Transactions [80.49176924360499]
We establish a framework for directing a society of simple, specialized, self-interested agents to solve sequential decision problems.
We derive a class of decentralized reinforcement learning algorithms.
We demonstrate the potential advantages of a society's inherent modular structure for more efficient transfer learning.
arXiv Detail & Related papers (2020-07-05T16:41:09Z)
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.