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R_i~={ FUNC {Probability~Of~Reporting~Use~With~The~New~Survey~Methodology}} over
{ FUNC {Probability~Of~Reporting~Use~With~The~Old~Survey~Methodology}}
In equation (1) the constant A is simply a scale factor set equal to
left[ U-L right]~ DIV ~left[ (1-L)(U-1) right]
,
beta
are the model coefficients, and
X_i
is a vector of explanatory variables. The explanatory variables considered in the models consisted of the categorical indicator variables for age group and race/ethnicity. The parameters L and U are the predetermined constants that force the estimated
R_i
to be
L ~<=~ R_i~ <=~ U ~~~~~~~~~ func {for ~\all~ i ~\and~\for~\any~\value~\of~X_i beta}
.
Notice that if the constant Lis set equal to zero and Uapproaches , then the constant A approaches 1, and equation (1) reduces to the familiar, unconstrained exponential model:
R_i~=~{e^{-X_i beta} }
.
The model parameter vector
beta
in (1) was estimated by solving the generalized raking equations:
Sum from {i in S_{1994-A}} w_i ~R_i~X_i^T~y_i ~~=~~
Sum from {i in S_{1994-B}} w_i ~X_i^T~y_i
forces the 1994-A estimate to equal the 1994-B estimate for any subpopulation represented by an indicator variable in
X_i
. Therefore, for example, if an appropriate indicator for the age group=12-17 year-olds was included in
X_i
, then the model-based estimate of the
R_i
's would produce an adjusted prevalence estimate using the 1994-A sample that exactly equaled the prevalence estimate generated from the 1994-B sample for the 12-17 year-old age group.
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This page was last updated on June 16, 2008. |
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SAMHSA, an agency in the Department of Health and Human Services, is the Federal Government's lead agency for improving the quality and availability of substance abuse prevention, addiction treatment, and mental health services in the United States.
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