fabler107

2022-11-15

True or false?

The amount of hours you work babysitting and the amount of money you earn- has correlation, but no causation

The amount of hours you work babysitting and the amount of money you earn- has correlation, but no causation

Lillianna Salazar

Beginner2022-11-16Added 22 answers

In the question we have to determine wether the statement is true or false.

Given statement is false and the explaination is as shown below -

To understand the statement we have to in understand the meaning of correlation and causation.

Correlation - It means the relationship between two variables or we can say two variables can be related as parallel.

Here babysitting and money are correlated because when you work you earn.

Causation - It means that one event causes other event to occur.

Here in the question causation occur because the work you do i.e. babysitting causes you to earn money. So working causes money to be earned.

So the statement is False.

Given statement is false and the explaination is as shown below -

To understand the statement we have to in understand the meaning of correlation and causation.

Correlation - It means the relationship between two variables or we can say two variables can be related as parallel.

Here babysitting and money are correlated because when you work you earn.

Causation - It means that one event causes other event to occur.

Here in the question causation occur because the work you do i.e. babysitting causes you to earn money. So working causes money to be earned.

So the statement is False.

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c) 1

d) negative

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My questions are:

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