The Analyst Biometrics Bulletin

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ErrorsInVariablesBiblio.pdf
© 2009, Timothy G. Gregoire, Yale University
Last revised: December 2009
ERRORS IN VARIABLES BIBLIOGRAPHY
1877-2009 (191 Entries)
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ErrorsInVariablesBiblio.doc
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