MEMLNov 21, 2015

Kernel Additive Principal Components

arXiv:1511.06821v11 citations
Originality Incremental advance
AI Analysis

This work addresses the need for symmetric, nonlinear data analysis methods in machine learning, representing an incremental improvement over existing APC approaches.

The paper tackles the problem of estimating additive principal components (APCs) as a nonlinear generalization of linear principal components, proposing a kernel-based method that achieves regularization through shrinkage and establishes consistency for the estimated APCs.

Additive principal components (APCs for short) are a nonlinear generalization of linear principal components. We focus on smallest APCs to describe additive nonlinear constraints that are approximately satisfied by the data. Thus APCs fit data with implicit equations that treat the variables symmetrically, as opposed to regression analyses which fit data with explicit equations that treat the data asymmetrically by singling out a response variable. We propose a regularized data-analytic procedure for APC estimation using kernel methods. In contrast to existing approaches to APCs that are based on regularization through subspace restriction, kernel methods achieve regularization through shrinkage and therefore grant distinctive flexibility in APC estimation by allowing the use of infinite-dimensional functions spaces for searching APC transformation while retaining computational feasibility. To connect population APCs and kernelized finite-sample APCs, we study kernelized population APCs and their associated eigenproblems, which eventually lead to the establishment of consistency of the estimated APCs. Lastly, we discuss an iterative algorithm for computing kernelized finite-sample APCs.

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