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首页> 外文期刊>Signal Processing Letters, IEEE >$L_{p}$ Norm Localized Multiple Kernel Learning via Semi-Definite Programming
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$L_{p}$ Norm Localized Multiple Kernel Learning via Semi-Definite Programming

机译:$ L_ {p} $通过半定值编程进行局部本地化的多核学习

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摘要

Our objective is to train SVM based Localized Multiple Kernel Learning with arbitrary $l_{p}$ -norm constraint using the alternating optimization between the standard SVM solvers with the localized combination of base kernels and associated sample-specific kernel weights. Unfortunately, the latter forms a difficult $l_{p}$-norm constraint quadratic optimization. In this letter, by approximating the $l_{p}$-norm using Taylor expansion, the problem of updating the localized kernel weights is reformulated as a non-convex quadratically constraint quadratic programming, and then solved via associated convex Semi-Definite Programming relaxation. Experiments on ten benchmark machine learning datasets demonstrate the advantages of our approach.
机译:我们的目标是使用标准SVM解算器与基础内核和相关样本特定内核权重的本地化组合之间的交替优化来训练具有任意$ l_ {p} $ -norm约束的基于SVM的本地化多内核学习。不幸的是,后者形成了困难的$ l_ {p} $-范数约束二次优化。在这封信中,通过使用泰勒展开逼近$ l_ {p} $-范数,将更新局部核权重的问题重新表述为非凸二次约束二次规划,然后通过相关的凸半定规划松弛解决。在十个基准机器学习数据集上进行的实验证明了我们方法的优势。

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