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The Jackknife, the Bootstrap, and Other Resampling Plans

The Jackknife, the Bootstrap, and Other Resampling Plans

The Jackknife, the Bootstrap, and Other Resampling Plans

Bradley Efron
January 1982
Paperback
9780898711790
AUD$110.00
inc GST
Paperback

    The jackknife and the bootstrap are nonparametric methods for assessing the errors in a statistical estimation problem. They provide several advantages over the traditional parametric approach: the methods are easy to describe and they apply to arbitrarily complicated situations; distribution assumptions, such as normality, are never made. This monograph connects the jackknife, the bootstrap, and many other related ideas such as cross-validation, random subsampling, and balanced repeated replications into a unified exposition. The theoretical development is at an easy mathematical level and is supplemented by a large number of numerical examples. The methods described in this monograph form a useful set of tools for the applied statistician. They are particularly useful in problem areas where complicated data structures are common, for example, in censoring, missing data, and highly multivariate situations.

    Product details

    January 1982
    Paperback
    9780898711790
    100 pages
    252 × 172 × 8 mm
    0.184kg
    This item is not supplied by Cambridge University Press in your region. Please contact Soc for Industrial & Applied Mathematics for availability.

    Table of Contents

    • The Jackknife Estimate of Bias
    • The Jackknife Estimate of Variance
    • Bias of the Jackknife Variance Estimate
    • The Bootstrap
    • The Infinitesimal Jackknife
    • The Delta Method and the Influence Function
    • Cross-Validation, Jackknife and Bootstrap
    • Balanced Repeated Replications (Half-Sampling)
    • Random Subsampling
    • Nonparametric Confidence Intervals.