Chapter 3: Problem 19
Prove that if \(X\) and \(Y\) are jointly continuous, then $$ E[X]=\int_{-\infty}^{\infty} E[X \mid Y=y] f_{Y}(y) d y $$
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Chapter 3: Problem 19
Prove that if \(X\) and \(Y\) are jointly continuous, then $$ E[X]=\int_{-\infty}^{\infty} E[X \mid Y=y] f_{Y}(y) d y $$
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The joint density of \(X\) and \(Y\) is given by
$$
f(x, y)=\frac{e^{-x / y} e^{-y}}{y}, \quad 0
An unbiased die is successively rolled. Let \(X\) and \(Y\) denote, respectively, the number of rolls necessary to obtain a six and a five. Find (a) \(E[X]\), (b) \(E[X \mid Y=1]\), (c) \(E[X \mid Y=5]\).
Let \(X\) be uniform over \((0,1)\). Find \(E\left[X \mid X<\frac{1}{2}\right]\).
(a) From the results of Section \(3.6 .3\) we can conclude that there are \(\left(\begin{array}{c}n+m-1 \\ m-1\end{array}\right)\) nonnegative integer valued solutions of the equation \(x_{1}+\cdots+x_{m}=n\) Prove this directly. (b) How many positive integer valued solutions of \(x_{1}+\cdots+x_{m}=n\) are there? Hint: Let \(y_{i}=x_{i}-1\). (c) For the Bose-Einstein distribution, compute the probability that exactly \(k\) of the \(X_{i}\) are equal to 0 .
You have two opponents with whom you alternate play. Whenever you play \(A\), you win with probability \(p_{A}\); whenever you play \(B\), you win with probability \(p_{B}\), where \(p_{B}>p_{A} .\) If your objective is to minimize the number of games you need to play to win two in a row, should you start with \(A\) or with \(B\) ? Hint: Let \(E\left[N_{i}\right]\) denote the mean number of games needed if you initially play \(i\). Derive an expression for \(E\left[N_{A}\right]\) that involves \(E\left[N_{B}\right]\); write down the equivalent expression for \(E\left[N_{B}\right]\) and then subtract.
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