This paper presents a specialised Bayesian model for analysing the covariance of data that are observed in the form of matrices, which is particularly suitable for images. Compared to existing generalpurpose covariance learning techniques, we exploit the fact that the variables are organised as an array with two sets of ordered indexes, which induces innate relationship between the variables. Specifically, we adopt a factorised structure for the covariance matrix. The covariance of two variables is represented by the product of the covariance of the two corresponding rows and that of the two columns. The factors, i.e. The row-wise and column-wise covariance matrices are estimated by Bayesian inference with sparse priors. Empirical study has...
The pursuit of the correlation structure of a high-dimensional random construct, underlines my docto...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
Abstract—Data representation plays a key role in many machine learning tasks. Specific domain knowle...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
Principal component analysis (PCA) computes a succinct data representation by converting the data to...
Learning algorithms can only perform well when the model is trained using suffcient number of traini...
Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any m...
Modeling correlation (and covariance) matrices can be challenging due to the positive-definiteness c...
Complex dependency structures are often conditionally modeled, where random effects parameters are u...
Inference in matrix-variate Gaussian models has major applications for multi-output prediction and j...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Canonical correlation analysis (CCA) is a classical method for seeking correlations between two mult...
A novel Bayesian modelling framework for response accuracy (RA), response times (RTs) and other proc...
The pursuit of the correlation structure of a high-dimensional random construct, underlines my docto...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
Abstract—Data representation plays a key role in many machine learning tasks. Specific domain knowle...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
Principal component analysis (PCA) computes a succinct data representation by converting the data to...
Learning algorithms can only perform well when the model is trained using suffcient number of traini...
Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any m...
Modeling correlation (and covariance) matrices can be challenging due to the positive-definiteness c...
Complex dependency structures are often conditionally modeled, where random effects parameters are u...
Inference in matrix-variate Gaussian models has major applications for multi-output prediction and j...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Canonical correlation analysis (CCA) is a classical method for seeking correlations between two mult...
A novel Bayesian modelling framework for response accuracy (RA), response times (RTs) and other proc...
The pursuit of the correlation structure of a high-dimensional random construct, underlines my docto...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
Abstract—Data representation plays a key role in many machine learning tasks. Specific domain knowle...