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Multivariate Probability Distributions. Multivariate Random Variables In many settings, we are interested in 2 or more characteristics observed in experiments.

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Presentation on theme: "Multivariate Probability Distributions. Multivariate Random Variables In many settings, we are interested in 2 or more characteristics observed in experiments."— Presentation transcript:

1 Multivariate Probability Distributions

2 Multivariate Random Variables In many settings, we are interested in 2 or more characteristics observed in experiments Often used to study the relationship among characteristics and the prediction of one based on the other(s) Three types of distributions: –Joint: Distribution of outcomes across all combinations of variables levels –Marginal: Distribution of outcomes for a single variable –Conditional: Distribution of outcomes for a single variable, given the level(s) of the other variable(s)

3 Joint Distribution

4 Marginal Distributions

5 Conditional Distributions Describes the behavior of one variable, given level(s) of other variable(s)

6 Expectations

7 Expectations of Linear Functions

8 Variances of Linear Functions

9 Covariance of Two Linear Functions

10 Multinomial Distribution Extension of Binomial Distribution to experiments where each trial can end in exactly one of k categories n independent trials Probability a trial results in category i is p i Y i is the number of trials resulting in category I p 1 +…+p k = 1 Y 1 +…+Y k = n

11 Multinomial Distribution

12

13 Conditional Expectations When E[Y 1 |y 2 ] is a function of y 2, function is called the regression of Y 1 on Y 2

14 Unconditional and Conditional Mean

15 Unconditional and Conditional Variance

16 Compounding Some situations in theory and in practice have a model where a parameter is a random variable Defect Rate (P) varies from day to day, and we count the number of sampled defectives each day (Y) –P i ~Beta(  ) Y i |P i ~Bin(n,P i ) Numbers of customers arriving at store (A) varies from day to day, and we may measure the total sales (Y) each day –A i ~ Poisson( ) Y i |A i ~ Bin(A i,p)


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