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Quadratically Constrained Quadratic Programming for Subspace Selection in Kernel Regression Estimation

机译:核回归估计中子空间选择的二次约束二次规划

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In this contribution we consider the problem of regression estimation. We elaborate on a framework based on functional analysis giving rise to structured models in the context of reproducing kernel Hilbert spaces. In this setting the task of input selection is converted into the task of selecting functional components depending on one (or more) inputs. In turn the process of learning with embedded selection of such components can be formalized as a convex-concave problem. This results in a practical algorithm that can be implemented as a quadratically constrained quadratic programming (QCQP) optimization problem. We further investigate the mechanism of selection for the class of linear functions, establishing a relationship with LASSO.
机译:在这一贡献中,我们考虑了回归估计的问题。我们详细介绍了一个基于功能分析的框架,该框架在重现内核希尔伯特空间的背景下产生了结构化模型。在此设置中,将输入选择任务转换为根据一个(或多个)输入选择功能组件的任务。反过来,可以将带有嵌入式选择的此类组件的学习过程形式化为凸凹问题。这导致可以被实现为二次约束二次规划(QCQP)优化问题的实用算法。我们进一步研究线性函数类别的选择机制,并建立与LASSO的关系。

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