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Problems with Bootstrapping Pearson Correlations in Very Small Bivariate Samples

Published online by Cambridge University Press:  01 January 2025

Michael Dolker*
Affiliation:
Syracuse University
Silas Halperin
Affiliation:
Syracuse University
D. R. Divgi
Affiliation:
Syracuse University
*
Requests for reprints should be sent to Dr. Michael Dolker, Program Evaluation, Hutchings Psychiatric Center, Box 27, University Station, Syracuse, New York 13210.

Abstract

Efron's Monte Carlo bootstrap algorithm is shown to cause degeneracies in Pearson's r for sufficiently small samples. Two ways of preventing this problem when programming the bootstrap of r are considered.

Type
Notes And Comments
Copyright
Copyright © 1982 The Psychometric Society

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References

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