1 Major Component Detection and Analysis (1 MCDA): Foundations in Two Dimensions

Abstract

Principal Component Analysis (PCA) is widely used for identifying the major components of statistically distributed point clouds. Robust versions of PCA, often based in part on the 1 norm (rather than the 2 norm), are increasingly used, especially for point clouds with many outliers. Neither standard PCA nor robust PCAs can provide, without additional assumptions, reliable information for outlier-rich point clouds and for distributions with several main directions (spokes). We carry out a fundamental and complete reformulation of the PCA approach in a framework based exclusively on the 1 norm and heavy-tailed distributions. The 1 Major Component Detection and Analysis (1 MCDA) that we propose can determine the main directions and the radial extent of 2D data from single or multiple superimposed Gaussian or heavy-tailed distributions without and with patterned artificial outliers (clutter). In nearly all cases in the computational results, 2D 1 MCDA has accuracy superior to that of standard PCA and of two robust PCAs, namely, the projection-pursuit method of Croux and Ruiz-Gazen and the 1 factorization method of Ke and Kanade. (Standard PCA is, of course, superior to 1 MCDA for Gaussian-distributed point clouds.) The computing time of 1 MCDA is competitive with the computing times of the two robust PCAs.

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Document Details

Document Type
Technical Report
Publication Date
Jan 17, 2013
Accession Number
AD1074484

Entities

People

  • John E. Lavery
  • Qinwei Jin
  • Shu-cherng Fang
  • Ye Tian

Organizations

  • North Carolina State University

Tags

Communities of Interest

  • Human Systems

DTIC Thesaurus Topics

  • Algorithms
  • Business Administration
  • Computational Science
  • Computer Science
  • Data Mining
  • Data Sets
  • Electronic Mail
  • Factor Analysis
  • Gaussian Distributions
  • Information Science
  • Military Research
  • Network Science
  • Point Clouds
  • Recognition
  • Statistical Distributions
  • Students
  • Systems Engineering

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