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What is Principal Components

Handbook of Research on Machine Learning Applications and Trends: Algorithms, Methods, and Techniques
Such an orthonormal basis in which the covariance matrix is diagonal.
Published in Chapter:
Principal Graphs and Manifolds
Alexander N. Gorban (University of Leicester, UK) and Andrei Y. Zinovyev (Institut Curie, France)
DOI: 10.4018/978-1-60566-766-9.ch002
Abstract
In many physical, statistical, biological and other investigations it is desirable to approximate a system of points by objects of lower dimension and/or complexity. For this purpose, Karl Pearson invented principal component analysis in 1901 and found ‘lines and planes of closest fit to system of points’. The famous k-means algorithm solves the approximation problem too, but by finite sets instead of lines and planes. This chapter gives a brief practical introduction into the methods of construction of general principal objects (i.e., objects embedded in the ‘middle’ of the multidimensional data set). As a basis, the unifying framework of mean squared distance approximation of finite datasets is selected. Principal graphs and manifolds are constructed as generalisations of principal components and k-means principal points. For this purpose, the family of expectation/maximisation algorithms with nearest generalisations is presented. Construction of principal graphs with controlled complexity is based on the graph grammar approach.
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More Results
Major Components of Green Urbanization and Their Relative Importance: A Study on Some Districts of West Bengal (India)
Principal component analysis (PCA) is a statistical procedure that uses an orthogonal transformation to convert a set of observations of possibly correlated variables (entities each of which takes on various numerical values) into a set of values of linearly uncorrelated variables called principal components. Principal component analysis is an approach to factor analysis that considers the total variance in the data, which is unlike common factor analysis, and transforms the original variables into a smaller set of linear combinations.
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Clustering Methods for Gene-Expression Data
The principal components of data set are the projections of the data vectors onto new coordinate axes that result from a rotation of the centered data set. This rotation is done in such a way that the first principal component (the projection onto the first coordinate axis) has the largest possible variance, the second principal component has the next largest, and so on.
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