Q&A

Are two variables independent if the covariance is 0?

Are two variables independent if the covariance is 0?

If X and Y are independent variables, then their covariance is 0: Cov(X, Y ) = E(XY ) − µXµY = E(X)E(Y ) − µXµY = 0 The converse, however, is not always true. Cov(X, Y ) can be 0 for variables that are not inde- pendent.

Does zero covariance mean independence?

Zero covariance – if the two random variables are independent, the covariance will be zero. However, a covariance of zero does not necessarily mean that the variables are independent. A nonlinear relationship can exist that still would result in a covariance value of zero.

What happens when covariance is zero?

A positive value of Covariance means that two random variables tend to vary in the same direction, a negative value means that they vary in opposite directions, and a 0 means that they don’t vary together.

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How do you determine if two sets of data are independent?

Events A and B are independent if the equation P(A∩B) = P(A) · P(B) holds true. You can use the equation to check if events are independent; multiply the probabilities of the two events together to see if they equal the probability of them both happening together.

Is covariance always between 0 and 1?

Covariance measures the linear relationship between two variables. The correlation measures both the strength and direction of the linear relationship between two variables. Covariance values are not standardized. Therefore, the covariance can range from negative infinity to positive infinity.

When two variables are unrelated the correlation between them is zero?

If two variables are unrelated to each other, the covariance and correlation between them is zero (or very close to zero).

Does uncorrelated mean independent?

The words uncorrelated and independent may be used interchangeably in English, but they are not synonyms in mathematics. Independent random variables are uncorrelated, but uncorrelated random variables are not always independent.

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What if covariance is greater than 1?

If the greater values of one variable mainly correspond with the greater values of the other variable, and the same holds for the lesser values (that is, the variables tend to show similar behavior), the covariance is positive.

What’s the difference between variance and covariance?

Variance and covariance are mathematical terms frequently used in statistics and probability theory. Variance refers to the spread of a data set around its mean value, while a covariance refers to the measure of the directional relationship between two random variables.

Do independent variables have zero correlation?

By the definition of the correlation coefficient, if two variables are independent their correlation is zero.

When two variables are independent their covariance is 0?

“If two variables are independent, their covariance is 0. But, having a covariance of 0 does not imply the variables are independent.”. This is nicely explained by Macro here, and in the Wikipedia entry for independence.

What are some examples of data that have 0 covariance?

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Some other examples, consider datapoints that form a circle or ellipse, the covariance is 0, but knowing x you narrow y to 2 values. Or data in a square or rectangle. Also data that forms an X or a V or a ^ or < or > will all give covariance 0, but are not independent.

How do you find the independence of two random variables?

Independence of Random Variables If X and Y are two random variables and the distribution of X is not influenced by the values taken by Y, and vice versa, the two random variables are said to be independent. Mathematically, two discrete random variables are said to be independent if: P (X=x, Y=y) = P (X=x) P (Y=y), for all x,y.

What is negative covariance in statistics?

Negative covariance implies the greater the values of one random variable the lower the values for the other. Thus, the sign of covariance shows the nature of the linear relationship between two random variables. Finally, a covariance is zero for two independent random variables.