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2007
Book Article
Title

Heterogeneous component analysis

Abstract
In bioinformatics it is often desirable to combine data from various measurement sources and thus structured feature vectors are to be analyzed that possess different intrinsic blocking characteristics (e.g., different patterns of missing values, observation noise levels, effective intrinsic dimensionalities). We propose a new machine learning tool, heterogeneous component analysis (HCA), for feature extraction in order to better understand the factors that underlie such complex structured heterogeneous data. HCA is a linear block-wise sparse Bayesian PCA based not only on a probabilistic model with block-wise residual variance terms but also on a Bayesian treatment of a block-wise sparse factor-loading matrix. We study various algorithms that implement our HCA concept extracting sparse heterogeneous structure by obtaining common components for the blocks and specific components within each block. Simulations on toy and bioinformatics data underline the usefulness of the proposed structured matrix factorization concept.
Author(s)
Oba, S.
Kawanabe, M.
Fraunhofer FIRST
Müller, K.-R.
Fraunhofer FIRST
Ishii, S.
Mainwork
Advances in neural information processing systems. Vol. 20  
Link
Link
Language
English
FIRST
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