Exploration of Principal Component Analysis: Deriving Principal Component Analysis Visually Using Spectra

被引:120
|
作者
Beattie, J. Renwick [1 ]
Esmonde-White, Francis W. L. [2 ]
机构
[1] J Renwick Beattie Consulting, CEA Leyland Rd, Ballycastle BT54 6EZ, Antrim, North Ireland
[2] Esmonde White Technol, Ann Arbor, MI USA
关键词
Principal component analysis; PCA; spectroscopy; data reduction; multivariate analysis;
D O I
10.1177/0003702820987847
中图分类号
TH7 [仪器、仪表];
学科分类号
0804 ; 080401 ; 081102 ;
摘要
Spectroscopy rapidly captures a large amount of data that is not directly interpretable. Principal component analysis is widely used to simplify complex spectral datasets into comprehensible information by identifying recurring patterns in the data with minimal loss of information. The linear algebra underpinning principal component analysis is not well understood by many applied analytical scientists and spectroscopists who use principal component analysis. The meaning of features identified through principal component analysis is often unclear. This manuscript traces the journey of the spectra themselves through the operations behind principal component analysis, with each step illustrated by simulated spectra. Principal component analysis relies solely on the information within the spectra, consequently the mathematical model is dependent on the nature of the data itself. The direct links between model and spectra allow concrete spectroscopic explanation of principal component analysis , such as the scores representing "concentration" or "weights". The principal components (loadings) are by definition hidden, repeated and uncorrelated spectral shapes that linearly combine to generate the observed spectra. They can be visualized as subtraction spectra between extreme differences within the dataset. Each PC is shown to be a successive refinement of the estimated spectra, improving the fit between PC reconstructed data and the original data. Understanding the data-led development of a principal component analysis model shows how to interpret application specific chemical meaning of the principal component analysis loadings and how to analyze scores. A critical benefit of principal component analysis is its simplicity and the succinctness of its description of a dataset, making it powerful and flexible.
引用
收藏
页码:361 / 375
页数:15
相关论文
共 50 条
  • [31] Principal component analysis of Arctic solar irradiance spectra
    Rabbette, M
    Pilewskie, P
    [J]. JOURNAL OF GEOPHYSICAL RESEARCH-OCEANS, 2002, 107 (C10)
  • [32] PRINCIPAL COMPONENT ANALYSIS OF THE INFRARED-SPECTRA OF MIXTURES
    RASMUSSEN, GT
    LOWRY, SR
    RITTER, GL
    [J]. ANALYTICA CHIMICA ACTA-COMPUTER TECHNIQUES AND OPTIMIZATION, 1978, 2 (03): : 213 - 221
  • [33] A principal component analysis of transmission spectra of wine distillates
    M. V. Rogovaya
    G. V. Sinitsyn
    M. A. Khodasevich
    [J]. Optics and Spectroscopy, 2014, 117 : 839 - 843
  • [34] A principal component analysis of transmission spectra of wine distillates
    Rogovaya, M. V.
    Sinitsyn, G. V.
    Khodasevich, M. A.
    [J]. OPTICS AND SPECTROSCOPY, 2014, 117 (05) : 839 - 843
  • [35] Fringe and Noise Reductions of pMAIRS Spectra Using Principal Component Analysis
    Shioya, Nobutaka
    Shimoaka, Takafumi
    Hasegawa, Takeshi
    [J]. ANALYTICAL SCIENCES, 2017, 33 (01) : 117 - 120
  • [36] Fringe and Noise Reductions of pMAIRS Spectra Using Principal Component Analysis
    Nobutaka Shioya
    Takafumi Shimoaka
    Takeshi Hasegawa
    [J]. Analytical Sciences, 2017, 33 : 117 - 120
  • [37] Prediction of emission spectra of fluorescence materials using principal component analysis
    Shams-Nateri, A.
    Piri, N.
    [J]. COLOR RESEARCH AND APPLICATION, 2016, 41 (01): : 16 - 21
  • [38] Anomaly Detection Based on Kernel Principal Component and Principal Component Analysis
    Wang, Wei
    Zhang, Min
    Wang, Dan
    Jiang, Yu
    Li, Yuliang
    Wu, Hongda
    [J]. COMMUNICATIONS, SIGNAL PROCESSING, AND SYSTEMS, 2019, 463 : 2222 - 2228
  • [39] Exploration of Data Fusion Strategies Using Principal Component Analysis and Multiple Factor Analysis
    Mafata, Mpho
    Brand, Jeanne
    Kidd, Martin
    Medvedovici, Andrei
    Buica, Astrid
    [J]. BEVERAGES, 2022, 8 (04):
  • [40] Texture analysis of images using Principal Component Analysis
    Bharati, MH
    MacGregor, JF
    [J]. PROCESS IMAGING FOR AUTOMATIC CONTROL, 2001, 4188 : 27 - 37