Analytical Approximations to Conditional Distribution Functions

Abstract

Conditional inference plays a central role in statistics, but determination of relevant conditional distributions is often difficult. We develop analytical procedures that are accurate and easy to apply for approximating conditional distribution functions. For a continuous random vector we estimate conditional tail probabilities are smooth functions of X. Previous approaches have dealt with the cases where the variable whose conditional distribution is sought is a linear function of means, and where there are p-1 conditioning variables. However, in many practical circumstances the statistic of interest is a nonlinear function of means and it is advantageous to condition on a lower-dimensional ancillary statistic. Our procedure first involves approximating the marginal density function by an approach of Phillips (1983) and Tierney, Kass and Kadane (1989). An accurate approximation to the required conditional probability is then obtained by applying a marginal tail probability approximation of DiCiccio and Martin (1991) to the conditional density. Our method is illustrated in several examples, including one which uses a saddlepoint approximation for the density of X, and the method is applied for conditional bootstrap inference.

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Document Details

Document Type
Technical Report
Publication Date
Apr 20, 1992
Accession Number
ADA251631

Entities

People

  • G. A. Young
  • Michael A. Martin
  • Thomas J. Diciccio

Organizations

  • Stanford University

Tags

DTIC Thesaurus Topics

  • Algorithms
  • Computations
  • Data Science
  • Distribution Functions
  • Equations
  • Estimators
  • Information Science
  • Military Research
  • Monte Carlo Method
  • Normal Distribution
  • Numerical Integration
  • Probability
  • Statistical Algorithms
  • Statistical Inference
  • Statistics
  • United States
  • United States Government

Fields of Study

  • Mathematics

Readers

  • Statistical inference.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Machine Learning Algorithms