Question

Consider the linear regression model Yi = β0 + β1 Xi + ui Yi is the...

Consider the linear regression model Yi = β0 + β1 Xi + ui
Yi is the ______________, the ______________ or simply the ______________. Xi is the ______________, the ______________ or simply the ______________.

is the population regression line, or the population regression function. There are two ______________ in the function (β0 & β1 ).
β0 is is the ______________ of the population regression line;
β1is is the ______________ of the population regression line; and

ui is the ______________.

A. Coefficients
B. Dependent variable C. Error term
D. Independent variable E. Intercept
F. Left-hand variable G. Regressand
H. Regressor
I. Right hand side
J. Slope

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