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Distribution theory and inference for polynomial-normal densities
Authors:M Evans  T Swartz
Institution:1. Department of Statistics , University of Toronto , Toronto, Ontario, M5S 1A1;2. Department of Mathematics and Statistics , Simon Fraser University Burnaby , British Columbia, V5A 1S6
Abstract:This paper considers a class of densities formed by taking the product of nonnegative polynomials and normal densities. These densities provide a rich class of distributions that can be used in modelling when faced with non-normal characteristics such as skewness and multimodality. In this paper we address inferential and computational issues arising in the practical implementation of this parametric family in the context of the linear model. Exact results are recorded for the conditional analysis of location-scale models and an importance sampling algorithm is developed for the implementation of a conditional analysis for the general linear model when using polynomial-normal distributions for the error.
Keywords:polynomial-normal densities  distribution theory  conditional inference  Gram-Charlier approximations  importance sampling
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