Artigo
Bayesian outlier analysis in binary regression
Fecha
2010-01-01Registro en:
Journal of Applied Statistics. Abingdon: Routledge Journals, Taylor & Francis Ltd, v. 37, n. 8, p. 1355-1368, 2010.
0266-4763
10.1080/02664760903031153
WOS:000280810900008
2628413289391037
Autor
Universidade Estadual Paulista (Unesp)
Universidade Federal do Rio de Janeiro (UFRJ)
Resumen
We propose alternative approaches to analyze residuals in binary regression models based on random effect components. Our preferred model does not depend upon any tuning parameter, being completely automatic. Although the focus is mainly on accommodation of outliers, the proposed methodology is also able to detect them. Our approach consists of evaluating the posterior distribution of random effects included in the linear predictor. The evaluation of the posterior distributions of interest involves cumbersome integration, which is easily dealt with through stochastic simulation methods. We also discuss different specifications of prior distributions for the random effects. The potential of these strategies is compared in a real data set. The main finding is that the inclusion of extra variability accommodates the outliers, improving the adjustment of the model substantially, besides correctly indicating the possible outliers.