This paper introduces a new data-driven methodology for estimating sparse covariance matrices of the random coefficients in logit mixture models. Researchers typically specify covariance matrices in logit mixture models under one of two extreme assumptions: either an unrestricted full covariance matrix (allowing correlations between all random coefficients), or a restricted diagonal matrix (allowing no correlations at all). Our objective is to find optimal subsets of correlated coefficients for which we estimate covariances. We propose a new estimator, called MISC (mixed integer sparse covariance), that uses a mixed-integer optimization (MIO) program to find an optimal block diagonal structure specification for the covariance matrix, corres...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Consider a multiple measurement vector (MMV) model given by y[n] = Ax_s[n]; 1 ≤ n ≤ L where {y[n]}^L...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
Maximum likelihood and Bayesian estimation are both frequently used to fit mixed logit models to cho...
• We estimate a sample covariance matrix Σ from empirical data. • Objective: infer dependence relati...
<p>Mixture modeling of continuous data is an extremely effective and popular method for density esti...
. This paper surveys the theoretical and computational development of the restricted maximum likelih...
Mixed data refers to a mixture of continuous and categorical variables. The clustering problem with ...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
The paper considers the problem of estimating the covariance matrices of multiple classes in a low s...
We consider the problem of estimating high-dimensional covariance matrices of K-populations or class...
Mixed logit is a widely used discrete outcome model that requires for the analyst to make three impo...
International audienceWe consider Gaussian mixture models in high dimensions, focusing on the twin t...
© 2022Statistical inference for sparse covariance matrices is crucial to reveal the dependence struc...
This paper deals with the estimation of a high-dimensional covariance with a con-ditional sparsity s...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Consider a multiple measurement vector (MMV) model given by y[n] = Ax_s[n]; 1 ≤ n ≤ L where {y[n]}^L...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
Maximum likelihood and Bayesian estimation are both frequently used to fit mixed logit models to cho...
• We estimate a sample covariance matrix Σ from empirical data. • Objective: infer dependence relati...
<p>Mixture modeling of continuous data is an extremely effective and popular method for density esti...
. This paper surveys the theoretical and computational development of the restricted maximum likelih...
Mixed data refers to a mixture of continuous and categorical variables. The clustering problem with ...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
The paper considers the problem of estimating the covariance matrices of multiple classes in a low s...
We consider the problem of estimating high-dimensional covariance matrices of K-populations or class...
Mixed logit is a widely used discrete outcome model that requires for the analyst to make three impo...
International audienceWe consider Gaussian mixture models in high dimensions, focusing on the twin t...
© 2022Statistical inference for sparse covariance matrices is crucial to reveal the dependence struc...
This paper deals with the estimation of a high-dimensional covariance with a con-ditional sparsity s...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Consider a multiple measurement vector (MMV) model given by y[n] = Ax_s[n]; 1 ≤ n ≤ L where {y[n]}^L...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...