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Chapter 5 Joint Probability Distributions and Random Samples  5.1 - Jointly Distributed Random Variables.2 - Expected Values, Covariance, and Correlation.3.

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Presentation on theme: "Chapter 5 Joint Probability Distributions and Random Samples  5.1 - Jointly Distributed Random Variables.2 - Expected Values, Covariance, and Correlation.3."— Presentation transcript:

1 Chapter 5 Joint Probability Distributions and Random Samples  5.1 - Jointly Distributed Random Variables.2 - Expected Values, Covariance, and Correlation.3 - Statistics and Their Distributions.4 - The Distribution of the Sample Mean.5 - The Distribution of a Linear Combination

2 discrete Suppose X and Y are two discrete random variables with pmfs f X (x) and f Y (y) respectively: discrete Suppose Z is a third discrete random variable that depends on X and Y, i.e., there exists a joint pmf for every ordered pair ( x, y)…

3 discrete Suppose X and Y are two discrete random variables with pmfs f X (x) and f Y (y) respectively:

4 discrete Suppose Z is a third discrete random variable that depends on X and Y, i.e., there exists a joint pmf for every ordered pair ( x, y)… discrete Suppose X and Y are two discrete random variables with pmfs f X (x) and f Y (y) respectively:

5 discrete Suppose Z is a third discrete random variable that depends on X and Y, i.e., there exists a joint pmf for every ordered pair ( x, y)… discrete Suppose X and Y are two discrete random variables with pmfs f X (x) and f Y (y) respectively:

6 discrete Suppose Z is a third discrete random variable that depends on X and Y, i.e., there exists a joint pmf for every ordered pair ( x, y)… discrete Suppose X and Y are two discrete random variables with pmfs f X (x) and f Y (y) respectively:

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12 Def: X and Y are statistically independent if

13 i.e., each cell probability is equal to the product of its marginal probabilities.

14 Recall for X discrete… Probability Histogram

15 Recall for X discrete… continuous… As  x  0 and # rectangles  ∞, this “Riemann sum” approaches the area under the density curve, expressed as a definite integral. Probability Histogram

16 Joint Probability Mass Function

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18 Probability Histogram Joint Probability Mass Function

19 Similarly…

20 Joint Probability Mass Function Joint Probability Density Function Volume under density f(x, y) over A. “area element” Area A

21 Joint Probability Density Function Example: Uniform Distribution

22 Joint Probability Density Function A Example: Uniform Distribution

23 Joint Probability Density Function A Example:

24 Joint Probability Density Function A Example: A

25 A Joint Probability Density Function Example:

26 26

27 Joint Probability Mass Function

28 Joint Probability Density Function

29 Joint Probability Mass Function Joint Probability Density Function

30 Joint Probability Mass Function Joint Probability Density Function

31 A Example (revisted):

32 Joint Probability Density Function A Example (revisted):

33 Joint Probability Density Function Example (revisted): A

34 Joint Probability Mass Function Joint Probability Density Function

35 A Exercise:

36 Joint Probability Density Function Exercise: A

37 Joint Probability Density Function Exercise: A

38 Joint Probability Density Function X and Y are not independent if A is not a standard rectangle! Exercise:

39 Volume under density f(x, y) over A. Joint Probability Density Function Area A “Hypervolume” under density f over A. Definition of statistical independence of X and Y can be extended to any number of variables.


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