In recent years several researchers have proposed the use of the Gaussian graphical model defined on a high dimensional setting to explore the dependence relationships between random variables. Standard methods, usually proposed in literature, are based on the use of a specific penalty function, such as the L1-penalty function. In this paper our aim is to estimate and compare two or more Gaussian graphical models defined in a high dimensional setting. In order to accomplish our aim, we propose a new computational method, based on glasso method, which lets us to extend the notion of p-value.

Onorati, R., Augugliaro, L., Mineo, A. (2012). A computational method to estimate sparse multiple Gaussian graphical models. In Proceedings of the XLVI Scientific Meeting.

A computational method to estimate sparse multiple Gaussian graphical models

AUGUGLIARO, Luigi;MINEO, Angelo
2012-01-01

Abstract

In recent years several researchers have proposed the use of the Gaussian graphical model defined on a high dimensional setting to explore the dependence relationships between random variables. Standard methods, usually proposed in literature, are based on the use of a specific penalty function, such as the L1-penalty function. In this paper our aim is to estimate and compare two or more Gaussian graphical models defined in a high dimensional setting. In order to accomplish our aim, we propose a new computational method, based on glasso method, which lets us to extend the notion of p-value.
2012
978-88-6129-882-8
Onorati, R., Augugliaro, L., Mineo, A. (2012). A computational method to estimate sparse multiple Gaussian graphical models. In Proceedings of the XLVI Scientific Meeting.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/67610
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