Examples of using The dependent variable in English and their translations into Japanese
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Therefore, in a similar way to the  ordinary least squares(OLS) model, the  coefficients of the  QR model can be interpreted as the  rate of change of some quantile of the dependent variable distribution per unit change in the  value of some regressor. Moreover, as in ANCOVA, it's possible to mix qualitative and quantitative explanatory variables. .
Independent and the dependent variables, Pearson.
Y= The dependent variables.
Where Y is the  matrix of the dependent variables, X is the  matrix of the  explanatory variables. 
In the  case of the  OLS and PCR methods, if models need to be computed for several dependent variables, the  computation of the  models is simply a loop on the  columns of the dependent variables table Y. In the  case of PLS regression, the  covariance structure of Y also influences the  computations.
The Dependent variable or variable  to model.
Is the dependent variable appropriate for the  study?
Independent variable  and(B) to be the dependent variable.
The Dependent variable(or response variable)  is in our case the  Viscosity.
The dependent variable Y follows a normal distribution with expectation aX.
The Dependent variable(or variable  to model) is here the"Weight".
The dependent variable Y follows a normal distribution with expectation aX.
In the Dependent variable(s) field, select with the  mouse the  species.
Are the  criterion measures of the dependent variable appropriate, valid, and reliable?
Describing and evaluating the  relationship between the dependent variable, and one or more independent variables.
The Dependent variable(also called response variable)  is in our case the  column Dry weight.
Computations behind statistical modeling allow the  estimation of model parameters and further predictions of the dependent variable.