In knowledge-based systems, besides obtaining good output prediction accuracy, it is crucial to understand the subset of input variables that have most influence on the output, with the goal of gaining deeper insight into the underlying process. These requirements call for logistic model estimation techniques that provide a sparse solution, i.e., where coefficients associated with non-important variables are set to zero. In this work we compare the performance of two methods: the first one is based on the well known Least Absolute Shrinkage and Selection Operator (LASSO) which involves regularization with an l1 norm; the second one is the Relevance Vector Machine (RVM) which is based on a Bayesian implementation of the linear logistic model...
Maximum Likelihood (ML) in the linear model overfits when the number of predictors (M) exceeds the n...
This paper introduces a general Bayesian framework for obtaining sparse solutions to re-gression and...
Multinomial logistic regression provides the standard penalised maximum likelihood solution to multi...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
In this thesis, sparse logistic regression models are applied in a set of real world machine learnin...
Continuous variable selection using shrinkage procedures have recently been considered as favorable ...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
International audienceLogistic regression is a standard tool in statistics for binary classification...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
The abundance of available digital big data has created new challenges in identifying relevant varia...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
Kernelized LASSO (Least Absolute Selection and Shrinkage Operator) has been investigated in two sepa...
Logistic regression is commonly used for modeling dichotomous outcomes. In the classical setting, wh...
International audienceThis paper considers the problem of estimation and variable selection for larg...
Maximum Likelihood (ML) in the linear model overfits when the number of predictors (M) exceeds the n...
This paper introduces a general Bayesian framework for obtaining sparse solutions to re-gression and...
Multinomial logistic regression provides the standard penalised maximum likelihood solution to multi...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
In this thesis, sparse logistic regression models are applied in a set of real world machine learnin...
Continuous variable selection using shrinkage procedures have recently been considered as favorable ...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
International audienceLogistic regression is a standard tool in statistics for binary classification...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
The abundance of available digital big data has created new challenges in identifying relevant varia...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
Kernelized LASSO (Least Absolute Selection and Shrinkage Operator) has been investigated in two sepa...
Logistic regression is commonly used for modeling dichotomous outcomes. In the classical setting, wh...
International audienceThis paper considers the problem of estimation and variable selection for larg...
Maximum Likelihood (ML) in the linear model overfits when the number of predictors (M) exceeds the n...
This paper introduces a general Bayesian framework for obtaining sparse solutions to re-gression and...
Multinomial logistic regression provides the standard penalised maximum likelihood solution to multi...