Principal Component Analysis Is Central To The Study Of Multivariate Data. Although One Of The Earliest Multivariate Techniques, It Continues To Be The Subject Of Much Research, Ranging From New Model-based Approaches To Algorithmic Ideas From Neural Networks. It Is Extremely Versatile, With Applica
[Springer Series in Statistics] Principal Component Analysis || Introduction
β Scribed by Jolliffe, I. T.
- Book ID
- 120602050
- Publisher
- Springer New York
- Year
- 1986
- Tongue
- English
- Weight
- 758 KB
- Category
- Article
- ISBN
- 1475719043
No coin nor oath required. For personal study only.
β¦ Synopsis
Principal Component Analysis Is Probably The Oldest And Best Known Of The It Was First Introduced By Pearson (1901), Techniques Ofmultivariate Analysis. And Developed Independently By Hotelling (1933). Like Many Multivariate Methods, It Was Not Widely Used Until The Advent Of Electronic Computers, But It Is Now Weil Entrenched In Virtually Every Statistical Computer Package. The Central Idea Of Principal Component Analysis Is To Reduce The Dimen Sionality Of A Data Set In Which There Are A Large Number Of Interrelated Variables, While Retaining As Much As Possible Of The Variation Present In The Data Set. This Reduction Is Achieved By Transforming To A New Set Of Variables, The Principal Components, Which Are Uncorrelated, And Which Are Ordered So That The First Few Retain Most Of The Variation Present In All Of The Original Variables. Computation Of The Principal Components Reduces To The Solution Of An Eigenvalue-eigenvector Problem For A Positive-semidefinite Symmetrie Matrix. Thus, The Definition And Computation Of Principal Components Are Straightforward But, As Will Be Seen, This Apparently Simple Technique Has A Wide Variety Of Different Applications, As Weil As A Number Of Different Deri Vations. Any Feelings That Principal Component Analysis Is A Narrow Subject Should Soon Be Dispelled By The Present Book; Indeed Some Quite Broad Topics Which Are Related To Principal Component Analysis Receive No More Than A Brief Mention In The Final Two Chapters.
π SIMILAR VOLUMES
Principal Component Analysis Is Central To The Study Of Multivariate Data. Although One Of The Earliest Multivariate Techniques, It Continues To Be The Subject Of Much Research, Ranging From New Model-based Approaches To Algorithmic Ideas From Neural Networks. It Is Extremely Versatile, With Applica
by Sara van de Geer. Also, we did not include material due to David Donoho, lain Johnstone, and their school. We found ourΒ selves unprepared to write a distillate of the material. We did touch briefly on "nonparametrics," but not on "semiparametΒ rics." This is because we feel that the semiparametr