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Regression Model for Categorical and Limited Dependent Variables
Author(s):
S Long J
,
J. LONG
,
S Long
,
J. Scott Long
,
JS Long
,
J.S. Long
,
J. LONG
,
J. Long
,
J. Long
,
J. Long S.
,
J.S. LONG
,
S.J LONG
Publication date:
1997
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