simple diagnostic test for Gaussian regression
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simple diagnostic test for Gaussian regression by Dale J. Poirier

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Published by Institute for Policy Analysis, University of Toronto in Toronto .
Written in English


  • Econometrics,
  • Gaussian processes,
  • Regression analysis

Book details:

Edition Notes

Bibliography: p. 7.

Statementby Dale J. Poirier.
SeriesWorking paper / Institute for Policy Analysis, University of Toronto -- no. 8119, Working paper series (University of Toronto. Institute for Policy Analysis) -- no. 8119
LC ClassificationsHB141 P648
The Physical Object
Pagination7 p. --
ID Numbers
Open LibraryOL20810144M

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