Principal component analysis (PCA) is a commonly applied technique for dimensionality reduction. PCA implicitly minimizes a squared loss function, which may be inappropriate for data that is not real-valued, such as binary-valued data. This paper draws on ideas from the Exponential family, Generalized linear models, and Bregman distances, to give a generalization of PCA to loss functions that we argue are better suited to other data types. We describe algorithms for minimizing the loss functions, and give examples on simulated data.
This paper studies a data-adaptive principal component analysis (PCA) that does not require prior in...
We present a semi-parametric latent variable model based technique for density modelling, dimensiona...
We present an efficient global optimization algorithm for exponential family principal component ana...
Principal component analysis (PCA) is a commonly applied technique for dimensionality reduction. PCA...
Collins, Dasgupta, and Shcapire present a way to generalize the popuar di-mensionality reduction met...
Principal component analysis (PCA) is a widely used model for dimensionality reduction. In this pape...
We investigate a generalized linear model for dimensionality reduction of binary data. The model is ...
VVe investigate a generalized linear model fbr dimensionality reduction of binary data. The model ...
Principal component analysis is a widely used technique for dimensionality reduction, but is not bas...
Recently, supervised dimensionality reduction has been gaining attention, owing to the realization t...
Principal component analysis (PCA) is a widely used dimension reduction tool in the analysis of many...
Abstract The idea of summarizing the information contained in a large number of variables by a small...
Principal component analysis (PCA), also known as proper orthogonal decomposition or Karhunen-Loeve ...
Principal component analysis (PCA) is a widely used dimension reduction tool in the analysis of many...
In this paper, we propose a general dimensionality reduction method for data generated from a very b...
This paper studies a data-adaptive principal component analysis (PCA) that does not require prior in...
We present a semi-parametric latent variable model based technique for density modelling, dimensiona...
We present an efficient global optimization algorithm for exponential family principal component ana...
Principal component analysis (PCA) is a commonly applied technique for dimensionality reduction. PCA...
Collins, Dasgupta, and Shcapire present a way to generalize the popuar di-mensionality reduction met...
Principal component analysis (PCA) is a widely used model for dimensionality reduction. In this pape...
We investigate a generalized linear model for dimensionality reduction of binary data. The model is ...
VVe investigate a generalized linear model fbr dimensionality reduction of binary data. The model ...
Principal component analysis is a widely used technique for dimensionality reduction, but is not bas...
Recently, supervised dimensionality reduction has been gaining attention, owing to the realization t...
Principal component analysis (PCA) is a widely used dimension reduction tool in the analysis of many...
Abstract The idea of summarizing the information contained in a large number of variables by a small...
Principal component analysis (PCA), also known as proper orthogonal decomposition or Karhunen-Loeve ...
Principal component analysis (PCA) is a widely used dimension reduction tool in the analysis of many...
In this paper, we propose a general dimensionality reduction method for data generated from a very b...
This paper studies a data-adaptive principal component analysis (PCA) that does not require prior in...
We present a semi-parametric latent variable model based technique for density modelling, dimensiona...
We present an efficient global optimization algorithm for exponential family principal component ana...