Question

A linear regression line Group of answer choices implies a cause and effect relationship between x...

A linear regression line

Group of answer choices

implies a cause and effect relationship between x and y.

may be used to predict a value of y if the corresponding value of x is given.

No correct answer given

Homework Answers

Answer #1

In cause and effect relationship, the independent variable is the cause and the dependent variable is the effect. Linear regression attempts to model the relationship between the independent variable and dependent variable.

Linear regression is the method for predicting the value of a dependent variable Y, based on the value of an independent variable X.

So, the correct answers will be:

(a) implies a cause and effect relationship between x and y

(b) may be used to predict a value of y if the corresponding value of x is given.

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