Arbeitspapier

Modeling conditional densities using finite smooth mixtures

Smooth mixtures, i.e. mixture models with covariate-dependent mixing weights, are very useful flexible models for conditional densities. Previous work shows that using too simple mixture components for modeling heteroscedastic and/or heavy tailed data can give a poor fit, even with a large number of components. This paper explores how well a smooth mixture of symmetric components can capture skewed data. Simulations and applications on real data show that including covariate-dependent skewness in the components can lead to substantially improved performance on skewed data, often using a much smaller number of components. Furthermore, variable selection is effective in removing unnecessary covariates in the skewness, which means that there is little loss in allowing for skewness in the components when the data are actually symmetric. We also introduce smooth mixtures of gamma and log-normal components to model positively-valued response variables.

Language
Englisch

Bibliographic citation
Series: Sveriges Riksbank Working Paper Series ; No. 245

Classification
Wirtschaft
Subject
Bayesian inference
Markov chain Monte Carlo
Mixture of Experts
Variable selection
Statistische Verteilung
Modellierung
Bayes-Statistik
Markovscher Prozess
Monte-Carlo-Methode
Theorie

Event
Geistige Schöpfung
(who)
Li, Feng
Villani, Mattias
Kohn, Robert
Event
Veröffentlichung
(who)
Sveriges Riksbank
(where)
Stockholm
(when)
2010

Handle
Last update
10.03.2025, 11:44 AM CET

Data provider

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Object type

  • Arbeitspapier

Associated

  • Li, Feng
  • Villani, Mattias
  • Kohn, Robert
  • Sveriges Riksbank

Time of origin

  • 2010

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