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Distributed Estimation of Support Vector Machines for Matrix Data

Wangli Xu, Jiamin Liu, Heng Lian

2022IEEE Transactions on Neural Networks and Learning Systems15 citationsDOI

Abstract

Discrimination problems are of significant interest in the machine learning literature. There has been growing interest in extending traditional vector-based machine learning techniques to their matrix forms. In this article, we investigate the statistical properties of the nuclear-norm-based regularized linear support vector machines (SVMs), in particular establishing the convergence rate of the estimator in the high-dimensional setting. Furthermore, within the distributed estimation paradigm, we propose a communication-efficient estimator that can achieve the same convergence rate. We illustrate the performances of the estimators via some simulation examples and an empirical data analysis.

Topics & Concepts

EstimatorSupport vector machineRate of convergenceComputer scienceMatrix normConvergence (economics)Matrix (chemical analysis)Machine learningArtificial intelligenceMathematical optimizationAlgorithmMathematicsStatisticsEconomic growthEigenvalues and eigenvectorsMaterials scienceComposite materialQuantum mechanicsComputer networkEconomicsPhysicsChannel (broadcasting)Distributed Sensor Networks and Detection AlgorithmsStatistical Methods and InferenceSparse and Compressive Sensing Techniques