On the modification of M-out-of-N bootstrap method for heavy-tailed distributions

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2015

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Global Society of Scientific Research and Researchers

Abstract

This paper is on the modification of ๐‘š-out-of-๐‘› bootstrap method for heavy-tailed distributions such as income distribution. The objective of this paper is to present a modified ๐‘š-out-of-๐‘› bootstrap method (๐‘š๐‘š๐‘œ๐‘›) and compare its performance with the existing m-out-of-n bootstrap method (๐‘š๐‘œo๐‘›). The nature of the upper tail of a distribution is the major reason for the poor performance of classical bootstrap methods even in large samples. The โ€˜๐‘š๐‘š๐‘œ๐‘›โ€™ bootstrap method was therefore, proposed as an alternative method to โ€˜๐‘š๐‘œ๐‘›โ€™ bootstrap method. The distribution involved has finite variance. The simulated data sets used was drawn from Singh-Maddala distribution. The methodology involved decomposing the empirical distribution and sampling only nโƒ› times with replacement from a sample size n, such that nโƒ› โ†’โˆž as nโ†’โˆž, and nโƒ›/n โ†’0. The performances are judged using standard error; absolute bias; coefficient of variation and root mean square error. The findings showed that โ€˜๐‘š๐‘š๐‘œ๐‘›โ€™ performed better than ๐‘š๐‘œ๐‘› in moderate and larger samples and it converged faster

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Bootstrap, Decomposition, Heavy-tailed distributions, Singh-Maddala distribution

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