Please use this identifier to cite or link to this item: http://hdl.handle.net/11718/9037
Title: Importance sampling for estimating exact probabilities in permutational inference
Authors: Mehta, C. R.
Patel, N. R.
Senchaudhuri, P.
Keywords: Clinical Trials;Exacat Nonparametric Tests;Variance Reduction;Linear Rank Tests
Issue Date: 27-Sep-1988
Abstract: This article discusses importance sampling as an alternative to conventional Monte Carlo sampling for estimating exact signif- icance levels in a broad class of two-sample tests, including all of the linear rank tests (with or without censoring), homogeneity tests based on the chi-squared, hypergeometric, and likelihood ratio statistics, the Mantel-Haenszel trend test, and Zelen's test for a common odds ratio in several 2 x 2 contingency tables. Inference is based on randomly selecting 2 x k contingency tables from a reference set of all such tables with fixed marginals. Through a network algorithm, the tables are selected in proportion to their importance for reducing the variance of the estimated Monte Carlo p-value. Spectacular gains, up to four orders of magnitude, are achieved relative to conventional Monte Carlo sampling. The technique is illustrated on four real data sets.
Description: Journal of the American Statistical Association , Vol. 83, No. 404, (December 1988), pp. 999-1005
URI: http://hdl.handle.net/11718/9037
Appears in Collections:Journal Articles

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