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What are the basic assumptions to be made for linear regression?
in Data Science & Statistics by Bronze Status (8,638 points) | 72 views

1 Answer

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1.    The regression model is linear in parameters.

2.    The mean of residuals is zero.

3.    Homoscedasticity of residuals or equal variance.

4.    No autocorrelation of residuals.

5.    The X variables and residuals are uncorrelated.

6.    The variability in X values is positive.

7.    The regression model is correctly specified.

8.    No perfect multicollinearity.

9.    The number of observations, n, is far greater than the number of parameters to be estimated.

9.    The variability in X values is positive

10.    Normality of residuals
by Diamond (40,336 points)

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