Question

If the slope coefficient βi in the multiple linear model is negative, it suggests an inverse...

If the slope coefficient βi in the multiple linear model is negative, it suggests an inverse (negative) relationship between the explanatory variable xi and the response variable y, holding the other explanatory variables constant. Group of answer choices

True

False

Homework Answers

Answer #1

The slope coefficient is how much the how much the mean of depended variable changes, when there is a unit change in the independent variable holding other variables in the model constant. The slope coefficient can be positive, negetive, 0 and indefinite. Here the slope coefficient is negative, indicating an inverse relationship among the independent and dependent variables, is., when independent variable increase, the dependent variable tends to decrease. Therefore in this context true is the right answer.

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