Spatial Shrinkage Prior: A Probabilistic Approach to Model for Categorical Variables with Many Levels

Producción científica: Capítulo en Libro/ReporteContribución a la conferencia

Resumen

One of the most commonly used methods to prevent overfitting and select relevant variables in regression models with many predictors is the penalized regression technique. Under such approaches, variable selection is performed in a non-probabilistic way, using some optimization criterion. A Bayesian approach to penalized regression has been proposed by assuming a prior distribution for the regression coefficients that plays a similar role as the penalty term in classical statistics: to shrink non-significant coefficients toward zero and assign a significant probability mass to non-negligible coefficients. These prior distributions, called shrinkage priors, usually assume independence among the covariates, which may not be an appropriate assumption in many cases. We propose two shrinkage priors to model the uncertainty about coefficients that are spatially correlated. The proposed priors are considered as an alternative approach to model the uncertainty about the coefficients of categorical variables with many levels. To illustrate their use, we consider the linear regression model. We evaluate the proposed method through several simulation studies.

Idioma originalInglés estadounidense
Título de la publicación alojadaApplications of Computational Intelligence - 6th IEEE Colombian Conference, ColCACI 2023, Revised Selected Papers
EditoresAlvaro David Orjuela-Cañón, Jesus A Lopez, Julián David Arias-Londoño
EditorialSpringer Science and Business Media Deutschland GmbH
Páginas154-170
Número de páginas17
ISBN (versión impresa)9783031484148
DOI
EstadoPublicada - 2024
Evento6th IEEE Colombian Conference on Applications of Computational Intelligence, ColCACI 2023 - Bogota, Colombia
Duración: jul. 26 2023jul. 28 2023

Serie de la publicación

NombreCommunications in Computer and Information Science
Volumen1865 CCIS
ISSN (versión impresa)1865-0929
ISSN (versión digital)1865-0937

Conferencia

Conferencia6th IEEE Colombian Conference on Applications of Computational Intelligence, ColCACI 2023
País/TerritorioColombia
CiudadBogota
Período7/26/237/28/23

Áreas temáticas de ASJC Scopus

  • Ciencia de la Computación General
  • Matemáticas General

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