Product of correlated random variables

In summary, the question was asked about the product of probabilities for correlated random events or variables. It was clarified that if the probabilities for each event can be computed, then the product can also be computed. However, the question may have actually been about computing the probability for a specific sequence of events, which cannot be determined solely from the correlation coefficients and individual probabilities. This is because the full joint distribution has more degrees of freedom than the correlation matrix and individual distributions.
  • #1
benjaminmar8
10
0
Hi, All,

Let x1 x2... Xn be correlated random events (or variables). Say P(X1), P(X2)..., P(Xn) can be computed, in addition to that, covariance and correlated between all X can be computed. My question is, what is P(X1) * P(X2) *... * P(Xn)?
 
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  • #2
Well, if P(X1=x1)...P(Xn=xn) can be computed, then obviously P(X1=x1) * ... * P(Xn=xn) can also be computed as the product of those. Perhaps you meant to ask, "what is P(X1=x1, X2=x2, ..., Xn=xn)?" From just the correlation coefficients, you don't have enough information to compute that. I could give you a specific example of a situation where P(X1=x1,X2=x2) can't be computed from your given information, but it is more intuitive to note that the correlation coefficients give you n^2 numbers, and if you know every P(X_i=x_j) that gives you mn numbers where m is the number of discrete values each variable may take, but knowing every P(X1=x_j1,...,Xn=x_jn) for each sequence of indices j1 ... jn, involves knowing m^n numbers, potentially a much larger number than n^2 + mn. So the full joint distribution usually has a lot more "degrees of freedom" than the correlation matrix + the individual distributions, so specifying the latter can't tell you everything about the former. That's not exactly a proof, but it should help give an intuitive idea.
 

1. What is a "product of correlated random variables"?

A product of correlated random variables refers to the result of multiplying two or more random variables that are dependent on each other. In other words, the value of one variable affects the value of another.

2. How is the correlation between random variables calculated?

The correlation between two random variables is typically measured using a statistic called the correlation coefficient. This is a numerical value that ranges from -1 to 1, with a positive value indicating a positive correlation and a negative value indicating a negative correlation.

3. What is the difference between a positive and negative correlation?

A positive correlation means that when one variable increases, the other variable also tends to increase. In a negative correlation, when one variable increases, the other variable tends to decrease. A correlation of 0 indicates no relationship between the variables.

4. Can a product of correlated random variables be used to predict future outcomes?

Yes, if two variables are positively correlated, knowing the value of one variable can give you some indication of the value of the other variable. However, correlation does not necessarily imply causation, so caution should be taken when using this method for prediction.

5. How can the correlation between random variables affect statistical analysis?

The correlation between random variables can have a significant impact on the results of statistical analysis. If two variables are highly correlated, it may lead to multicollinearity, which can affect the accuracy of regression models. It can also impact the interpretation of statistical tests and the validity of study conclusions.

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