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Journal ArticleDOI

Mixtures of probabilistic principal component analyzers

Michael E. Tipping, +1 more
- 01 Feb 1999 - 
- Vol. 11, Iss: 2, pp 443-482
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TLDR
PCA is formulated within a maximum likelihood framework, based on a specific form of gaussian latent variable model, which leads to a well-defined mixture model for probabilistic principal component analyzers, whose parameters can be determined using an expectation-maximization algorithm.
Abstract
Principal component analysis (PCA) is one of the most popular techniques for processing, compressing, and visualizing data, although its effectiveness is limited by its global linearity. While nonlinear variants of PCA have been proposed, an alternative paradigm is to capture data complexity by a combination of local linear PCA projections. However, conventional PCA does not correspond to a probability density, and so there is no unique way to combine PCA models. Therefore, previous attempts to formulate mixture models for PCA have been ad hoc to some extent. In this article, PCA is formulated within a maximum likelihood framework, based on a specific form of gaussian latent variable model. This leads to a well-defined mixture model for probabilistic principal component analyzers, whose parameters can be determined using an expectationmaximization algorithm. We discuss the advantages of this model in the context of clustering, density modeling, and local dimensionality reduction, and we demonstrate its application to image compression and handwritten digit recognition.

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Citations
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Journal ArticleDOI

Density-ratio matching under the Bregman divergence: a unified framework of density-ratio estimation

TL;DR: A comprehensive review of existing density-ratio estimation methods and their pros and cons can be found in this article, where the Bregman divergence is used as a special case.
Journal ArticleDOI

Extending mixtures of multivariate t-factor analyzers

TL;DR: The extension of the mixtures of multivariate t-factor analyzers model is described to include constraints on the degrees of freedom, the factor loadings, and the error variance matrices to create a family of six mixture models, including parsimonious models.
Proceedings ArticleDOI

Expectation-maximization for sparse and non-negative PCA

TL;DR: This work studies the problem of finding the dominant eigenvector of the sample covariance matrix, under additional constraints on the vector: a cardinality constraint limits the number of non-zero elements, and non-negativity forces the elements to have equal sign.
Journal ArticleDOI

A unified model for probabilistic principal surfaces

TL;DR: A unified covariance model is introduced that implements the probabilistic principal surface (PPS), and it is shown in two different comparisons that the PPS outperforms the GTM under identical parameter settings.
Book

Advances in Independent Component Analysis

TL;DR: The Independence Assumption: Analyzing the Independence of the Components by Topography and the Independence Ass assumption in Ensemble Learning is analyzed.
References
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Book

Neural networks for pattern recognition

TL;DR: This is the first comprehensive treatment of feed-forward neural networks from the perspective of statistical pattern recognition, and is designed as a text, with over 100 exercises, to benefit anyone involved in the fields of neural computation and pattern recognition.
Book

Principal Component Analysis

TL;DR: In this article, the authors present a graphical representation of data using Principal Component Analysis (PCA) for time series and other non-independent data, as well as a generalization and adaptation of principal component analysis.
Book ChapterDOI

Neural Networks for Pattern Recognition

TL;DR: The chapter discusses two important directions of research to improve learning algorithms: the dynamic node generation, which is used by the cascade correlation algorithm; and designing learning algorithms where the choice of parameters is not an issue.
Journal ArticleDOI

LIII. On lines and planes of closest fit to systems of points in space

TL;DR: This paper is concerned with the construction of planes of closest fit to systems of points in space and the relationships between these planes and the planes themselves.
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How do i combine permanova and PCA in a statistical analysis?

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