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What is Principal Manifold

Handbook of Research on Machine Learning Applications and Trends: Algorithms, Methods, and Techniques
Intuitively, a smooth manifold going through the middle of data cloud; formally, there exist several definitions for the case of data distributions: 1) Hastie and Stuelze’s principal manifolds are self-consistent curves and surfaces; 2) Kegl’s principal curves provide the minimal mean squared error given the limited curve length; 3) Tibshirani’s principal curves maximize the likelihood of the additive noise data model; 4) Gorban and Zinovyev elastic principal manifolds minimize a mean square error functional regularized by addition of energy of manifold stretching and bending; 5) Smola’s regularized principal manifolds minimize some form of a regularized quantization error functional; and some other definitions.
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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