forecasting model for inventory investments in Canada
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forecasting model for inventory investments in Canada

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Published by Bank of Canada in Ottawa .
Written in English


Book details:

Edition Notes

Statementby Marwan Chacra and Maral Kichian.
SeriesBank of Canada working paper -- 2004-39
ContributionsKichian, Maral, 1965-, Bank of Canada.
ID Numbers
Open LibraryOL19979673M

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