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... DISCRETE random variables X, Y Joint Probability Mass Function y1

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Presentation on theme: "... DISCRETE random variables X, Y Joint Probability Mass Function y1"— Presentation transcript:

1 ... DISCRETE random variables X, Y Joint Probability Mass Function y1
yc X x1 p(x1, y1) p(x1, y2) ... p(x1, yc) x2 p(x2, y1) p(x2, y2) p(x2, yc) xr p(xr, y1) p(xr, y2) p(xr, yc)

2 ... DISCRETE random variables X, Y Joint Probability Mass Function y1
yc X x1 p(x1, y1) p(x1, y2) ... p(x1, yc) pX (x1) x2 p(x2, y1) p(x2, y2) p(x2, yc) pX (x2) xr p(xr, y1) p(xr, y2) p(xr, yc) pX (xr) pY (y1) pY (y2) pY (yc) 1

3 Y = X =

4 X and Y are not independent!
Probabilities… X and Y are not independent!

5 X and Y are not independent!
Probabilities… X and Y are not independent! cdf

6 X and Y are not independent!
Probabilities… X and Y are not independent! cdf

7 Cumulative Probability
X = Event T = t Outcomes (AM, PM) Probability Cumulative Probability 2 (1, 1) .25 3 (1, 2), (2, 1) .45 = .70 = 4 (1, 3), (2, 2) .25 = .95 = 5 (2, 3) .05 1.00 =

8 ... DISCRETE random variables X, Y Joint Probability Mass Function y1
yc X x1 p(x1, y1) p(x1, y2) ... p(x1, yc) pX (x1) x2 p(x2, y1) p(x2, y2) p(x2, yc) pX (x2) xr p(xr, y1) p(xr, y2) p(xr, yc) pX (xr) pY (y1) pY (y2) pY (yc) 1

9 ... CONTINUOUS random variables X, Y
Joint Probability Density Function Joint Probability Mass Function Y y1 y2 yc X x1 p(x1, y1) p(x1, y2) ... p(x1, yc) pX (x1) x2 p(x2, y1) p(x2, y2) p(x2, yc) pX (x2) xr p(xr, y1) p(xr, y2) p(xr, yc) pX (xr) pY (y1) pY (y2) pY (yc) 1

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

11 ... Corollary ~ CONTINUOUS random variables X, Y
Joint Probability Density Function Joint Probability Mass Function Y y1 y2 yc X x1 p(x1, y1) p(x1, y2) ... p(x1, yc) pX (x1) x2 p(x2, y1) p(x2, y2) p(x2, yc) pX (x2) xr p(xr, y1) p(xr, y2) p(xr, yc) pX (xr) pY (y1) pY (y2) pY (yc) 1 Corollary ~ If X and Y are independent, then the joint cdf satisfies Proof: Exercise

12 Extension to multiple random variables X1, X2, X3,…, Xn
For simplicity, take n = 3: Discrete Continuous (e.g, Multinomial distribution)


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