Statistics for Data Science and Business Analysis - A3. Normality and Homoscedasticity

Statistics for Data Science and Business Analysis - A3. Normality and Homoscedasticity

Assessment

Interactive Video

Other

11th - 12th Grade

Hard

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Quizizz Content

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7 questions

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1.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

Why is normal distribution important in regression analysis?

It ensures the model has a zero mean.

It prevents heteroscedasticity.

It helps in making inferences from the model.

It is required for creating the regression model.

2.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What does the zero mean assumption imply in regression?

The error terms should have equal variance.

The model has no intercept.

The regression line is the best fitting one.

The error term is normally distributed.

3.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What is homoscedasticity in the context of regression?

Error terms have equal variance.

Error terms are normally distributed.

Error terms are independent.

Error terms have a zero mean.

4.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

How can heteroscedasticity be identified in a dataset?

By checking if the error terms have a zero mean.

By observing a pattern in the variance of error terms.

By ensuring the error terms are normally distributed.

By confirming the model has an intercept.

5.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

Which method can help address heteroscedasticity in regression?

Increasing the sample size.

Ensuring a zero mean of error terms.

Using a log transformation.

Adding more independent variables.

6.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What is a semi-log model in regression?

A model with no transformations applied.

A model where only the Y variable is transformed to log scale.

A model where only the X variable is transformed to log scale.

A model where both X and Y are transformed to log scale.

7.

MULTIPLE CHOICE QUESTION

30 sec • 1 pt

What does a log-log model imply in regression analysis?

Neither X nor Y is transformed.

Only Y is transformed to log scale.

Only X is transformed to log scale.

Both X and Y are transformed to log scale.