Joint Distribution - Example
Joint Distribution - Example Draw two socks at random, without replacement, from a drawer full of twelve colored socks: 6 black, 4 white, 2 purple Let B be the number of Black socks, W the number of White socks drawn, then the distributions of B and W are given by: 0 1 2 P(B=k) 6 12 5 11 = 15 66 2 6 12 6 11 = 36 66 6 12 5 11 = 15 66 P(W=k) 8 12 ...
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