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Constrained kernelized partial least squares

机译:约束核化偏最小二乘

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摘要

Nonlinear kernel methods have been widely used to deal with nonlinear problems in latent variable methods. However, in the presence of structured noise, these methods have reduced efficacy. We have previously introduced constrained latent variable methods that make use of any available additional knowledge about the structured noise. These methods improve performance by introducing additional constraints into the algorithm. In this paper, we build upon our previous work and introduce hard-constrained and soft-constrained nonlinear partial least squares methods using nonlinear kernels. The addition of nonlinear kernels reduces the effects of structured noise in nonlinear spaces and improves the regression performance between the input and response variables. Copyright (c) 2014 John Wiley & Sons, Ltd.
机译:非线性核方法已被广泛用于处理潜在变量方法中的非线性问题。但是,在存在结构性噪声的情况下,这些方法的功效降低。先前我们已经引入了约束潜变量方法,该方法利用了有关结构噪声的任何可用附加知识。这些方法通过将附加约束引入算法来提高性能。在本文中,我们在之前的工作基础上,介绍了使用非线性核的硬约束和软约束非线性偏最小二乘方法。非线性核的添加减少了非线性空间中结构噪声的影响,并改善了输入变量和响应变量之间的回归性能。版权所有(c)2014 John Wiley&Sons,Ltd.

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