Practical Data Science using Python - Linear Regression OLS Assumptions and Testing

Practical Data Science using Python - Linear Regression OLS Assumptions and Testing

Assessment

Interactive Video

Other

11th - 12th Grade

Hard

Created by

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FREE Resource

The video tutorial covers the concept of error terms in linear regression, emphasizing that the population mean of error terms should be zero. It discusses key assumptions such as uncorrelated predictor variables, constant variance (homoscedasticity), and absence of multicollinearity. The tutorial also explains the importance of R-squared and adjusted R-squared values, coefficients, and p-values in model evaluation. Techniques like variance inflation factor (VIF) and recursive feature elimination (RFE) are introduced for optimizing models. Finally, it highlights the significance of residual analysis and probability plots in validating model assumptions.

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10 questions

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1.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What is the population mean of error terms in a linear regression model?

0

1

0.5

-1

2.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

Which assumption states that predictor variables should not be correlated with the error term?

Homoscedasticity

Multicollinearity

No correlation with error term

Independence

3.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What does the absence of multicollinearity ensure in a linear regression model?

Predictor variables are correlated with the target variable

Predictor variables are independent of each other

Error terms have constant variance

Error terms are normally distributed

4.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

Why is the adjusted R-squared value preferred over the R-squared value?

It does not change with more features

It is easier to calculate

It penalizes the addition of irrelevant features

It is always higher

5.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What does a P-value greater than 0.05 indicate about a predictor feature?

The feature has a strong correlation

The feature is significant

The feature is not significant

The feature should be included

6.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What is the purpose of the Variance Inflation Factor (VIF) in model optimization?

To measure the correlation between predictors

To determine the model's accuracy

To evaluate the model's complexity

To assess the normality of residuals

7.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What does Recursive Feature Elimination (RFE) help with in linear regression?

Selecting important features

Improving residual normality

Increasing model complexity

Reducing model accuracy

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