On the Dual Formulation of Regularized Linear Systems with Convex Risks
作者:Tong Zhang
摘要
In this paper, we study a general formulation of linear prediction algorithms including a number of known methods as special cases. We describe a convex duality for this class of methods and propose numerical algorithms to solve the derived dual learning problem. We show that the dual formulation is closely related to online learning algorithms. Furthermore, by using this duality, we show that new learning methods can be obtained. Numerical examples will be given to illustrate various aspects of the newly proposed algorithms.
论文关键词:regulation, linear model, convex duality, support vector machine, logistic regression, augmented Lagrangian
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论文官网地址:https://doi.org/10.1023/A:1012498226479