A kernel Principal Component Analysis (kPCA) digest with a new backward mapping (pre-image reconstruction) strategy

Methodologies for multidimensionality reduction aim at discovering low-dimensional manifolds where data ranges. Principal Component Analysis (PCA) is very effective if data have linear structure. But fails in identifying a possible dimensionality reduction if data belong to a nonlinear low-dimensional manifold. For nonlinear dimensionality reduction, kernel Principal Component Analysis (kPCA) is appreciated because of its simplicity and ease implementation. The paper provides a concise review of PCA and kPCA main ideas, trying to collect in a single document aspects that are often dispersed. Moreover, a strategy to map back the reduced dimension into the original high dimensional space is also devised, based on the minimization of a discrepancy functional.

READ FULL TEXT

page 12

page 13

research
07/15/2012

Kernel Principal Component Analysis and its Applications in Face Recognition and Active Shape Models

Principal component analysis (PCA) is a popular tool for linear dimensio...
research
10/10/2021

Scaled torus principal component analysis

A particularly challenging context for dimensionality reduction is multi...
research
04/26/2021

Nonlinear dimensionality reduction for parametric problems: a kernel Proper Orthogonal Decomposition (kPOD)

Reduced-order models are essential tools to deal with parametric problem...
research
02/22/2023

Deep Kernel Principal Component Analysis for Multi-level Feature Learning

Principal Component Analysis (PCA) and its nonlinear extension Kernel PC...
research
03/17/2022

Dimensionality Reduction and Wasserstein Stability for Kernel Regression

In a high-dimensional regression framework, we study consequences of the...
research
09/16/2020

PCA Reduced Gaussian Mixture Models with Applications in Superresolution

Despite the rapid development of computational hardware, the treatment o...
research
11/10/2019

Manifold Denoising by Nonlinear Robust Principal Component Analysis

This paper extends robust principal component analysis (RPCA) to nonline...

Please sign up or login with your details

Forgot password? Click here to reset