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协作学习的元聚类方法

Meta Clustering for Collaborative Learning

Journal of Computational and Graphical Statistics · 2022
被引 2
ABS 3

中文导读

提出元聚类框架,通过将学习者按潜在监督函数分类,解决协作学习中筛选合格合作者的难题,并提升学习性能与数据公平性。

Abstract

In collaborative learning, learners coordinate to enhance each of their learning performances. From the perspective of any learner, a critical challenge is to filter out unqualified collaborators. We propose a framework named meta clustering to address the challenge. Unlike the classical problem of clustering data points, meta clustering categorizes learners. Assuming each learner performs a supervised regression on a standalone local dataset, we propose a Select-Exchange-Cluster (SEC) method to classify the learners by their underlying supervised functions. We theoretically show that the SEC can cluster learners into accurate collaboration sets. Empirical studies corroborate the theoretical analysis and demonstrate that SEC can be computationally efficient, robust against learner heterogeneity, and effective in enhancing single-learner performance. Also, we show how the proposed approach may be used to enhance data fairness. Supplementary materials for this article are available online.

机器学习聚类分析协作学习数据挖掘