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The application of Principal Component Analysis to materials science data

Research Papers

Authors
  • Changwon Suh
  • Arun Rajagopalan
  • Xiang Li
  • Krishna Rajan

Abstract

The relationship between apparently disparate sets of data is a critical component of interpreting materials' behavior, especially in terms of assessing the impact of the microscopic characteristics of materials on their macroscopic or engineering behavior. In this paper we demonstrate the value of principal component analysis of property data associated with high temperature superconductivity to examine the statistical impact of the materials' intrinsic characteristics on high temperature superconducting behavior
Year: 2002
Volume: 1 Issue: 1
Page/Article: 19-26
DOI: 10.2481/dsj.1.19
Submitted on Apr 15, 2015
Published on Jan 5, 2006
Peer Reviewed