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P. W. Holland and H. Wainer (Editors). Differential Item Functioning. Hillsdale, N J: Lawrence Erlbaum, 1993.

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P. W. Holland and H. Wainer (Editors). Differential Item Functioning. Hillsdale, N J: Lawrence Erlbaum, 1993.

Published online by Cambridge University Press:  01 January 2025

Gideon J. Mellenbergh*
Affiliation:
University of Amsterdam

Abstract

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Type
Reviews
Copyright
Copyright © 1995 The Psychometric Society

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References

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