基于核的学习中的原始和对偶模型表示

IF 11 Q1 STATISTICS & PROBABILITY Statistics Surveys Pub Date : 2010-01-01 DOI:10.1214/09-SS052
J. Suykens, C. Alzate, K. Pelckmans
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引用次数: 31

摘要

摘要:本文讨论了原始和(拉格朗日)对偶模型表示在监督学习和无监督学习问题中的作用。估计问题的说明在原始层次上被认为是一个约束优化问题。约束与模型相关,模型用特征映射表示。从最优性条件出发,共同求出最优模型表示和模型估计。在对偶层次上,模型用正定核函数表示,这是支持向量机方法的特点。讨论了最小二乘支持向量机作为核心模型如何在回归、分类、主成分分析、谱聚类、典型相关分析、降维和数据可视化等问题中发挥核心作用。
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Primal and dual model representations in kernel-based learning
Abstract: This paper discusses the role of primal and (Lagrange) dual model representations in problems of supervised and unsupervised learning. The specification of the estimation problem is conceived at the primal level as a constrained optimization problem. The constraints relate to the model which is expressed in terms of the feature map. From the conditions for optimality one jointly finds the optimal model representation and the model estimate. At the dual level the model is expressed in terms of a positive definite kernel function, which is characteristic for a support vector machine methodology. It is discussed how least squares support vector machines are playing a central role as core models across problems of regression, classification, principal component analysis, spectral clustering, canonical correlation analysis, dimensionality reduction and data visualization.
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来源期刊
Statistics Surveys
Statistics Surveys STATISTICS & PROBABILITY-
CiteScore
11.70
自引率
0.00%
发文量
5
期刊介绍: Statistics Surveys publishes survey articles in theoretical, computational, and applied statistics. The style of articles may range from reviews of recent research to graduate textbook exposition. Articles may be broad or narrow in scope. The essential requirements are a well specified topic and target audience, together with clear exposition. Statistics Surveys is sponsored by the American Statistical Association, the Bernoulli Society, the Institute of Mathematical Statistics, and by the Statistical Society of Canada.
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