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 generalized covariance matrix


Structure estimation for discrete graphical models: Generalized covariance matrices and their inverses

Neural Information Processing Systems

We investigate a curious relationship between the structure of a discrete graphical model and the support of the inverse of a generalized covariance matrix. We show that for certain graph structures, the support of the inverse covariance matrix of indicator variables on the vertices of a graph reflects the conditional independence structure of the graph. Our work extends results that have previously been established only in the context of multivariate Gaussian graphical models, thereby addressing an open question about the significance of the inverse covariance matrix of a non-Gaussian distribution. Based on our population-level results, we show how the graphical Lasso may be used to recover the edge structure of certain classes of discrete graphical models, and present simulations to verify our theoretical results.


Structure estimation for discrete graphical models: Generalized covariance matrices and their inverses

Neural Information Processing Systems

We investigate a curious relationship between the structure of a discrete graphical model and the support of the inverse of a generalized covariance matrix. We show that for certain graph structures, the support of the inverse covariance matrix of indicator variables on the vertices of a graph reflects the conditional independence structure of the graph. Our work extends results that have previously been es- tablished only in the context of multivariate Gaussian graphical models, thereby addressing an open question about the significance of the inverse covariance ma- trix of a non-Gaussian distribution. Based on our population-level results, we show how the graphical Lasso may be used to recover the edge structure of cer- tain classes of discrete graphical models, and present simulations to verify our theoretical results.


Beyond CCA: Moment Matching for Multi-View Models

arXiv.org Machine Learning

We introduce three novel semi-parametric extensions of probabilistic canonical correlation analysis with identifiability guarantees. We consider moment matching techniques for estimation in these models. For that, by drawing explicit links between the new models and a discrete version of independent component analysis (DICA), we first extend the DICA cumulant tensors to the new discrete version of CCA. By further using a close connection with independent component analysis, we introduce generalized covariance matrices, which can replace the cumulant tensors in the moment matching framework, and, therefore, improve sample complexity and simplify derivations and algorithms significantly. As the tensor power method or orthogonal joint diagonalization are not applicable in the new setting, we use non-orthogonal joint diagonalization techniques for matching the cumu-lants. We demonstrate performance of the proposed models and estimation techniques on experiments with both synthetic and real datasets.


Structure estimation for discrete graphical models: Generalized covariance matrices and their inverses

Neural Information Processing Systems

We investigate a curious relationship between the structure of a discrete graphical model and the support of the inverse of a generalized covariance matrix. We show that for certain graph structures, the support of the inverse covariance matrix of indicator variables on the vertices of a graph reflects the conditional independence structure of the graph. Our work extends results that have previously been established only in the context of multivariate Gaussian graphical models, thereby addressing an open question about the significance of the inverse covariance matrix of a non-Gaussian distribution. Based on our population-level results, we show how the graphical Lasso may be used to recover the edge structure of certain classes of discrete graphical models, and present simulations to verify our theoretical results.


Structure estimation for discrete graphical models: Generalized covariance matrices and their inverses

Neural Information Processing Systems

We investigate a curious relationship between the structure of a discrete graphical model and the support of the inverse of a generalized covariance matrix. We show that for certain graph structures, the support of the inverse covariance matrix of indicator variables on the vertices of a graph reflects the conditional independence structure of the graph. Our work extends results that have previously been established only in the context of multivariate Gaussian graphical models, thereby addressing an open question about the significance of the inverse covariance matrix of a non-Gaussian distribution. Based on our population-level results, we show how the graphical Lasso may be used to recover the edge structure of certain classes of discrete graphical models, and present simulations to verify our theoretical results.


Structure estimation for discrete graphical models: Generalized covariance matrices and their inverses

Neural Information Processing Systems

Recently, Liu et al. [6, 7] introduced the notion of a nonparanormal distribution, which generalizes Instead of only analyzing the standard covariance matrix, we show that it is often fruitful to augment the usual covariance matrix with higher-order interaction terms. Other related work on graphical model selection for discrete graphs includes the Classic Chow-Liu algorithm for trees [8]; nodewise logistic regression for discrete models with pairwise interactions [9, 10]; and techniques based on conditional entropy or mutual information [11, 12].