Date: Thursday May 7, 8.30AM Location: In-class
Let $S_n$ be a nearest neighbor simple random walk in $d$ dimensions. It has equal probabilities of going in each direction. In class, we stated that
Suppose that upon striking a plate, a single electron is transformed into electrons where and . Suppose each of these electrons strike a 2nd plate and release further electrons, independently of each other and with the same distribution as . Let be the total of electrons emitted from the 2nd plate. Find the mean and variance of and express it in terms of and .
Consider the following population model in discrete time. We have a tribe on some island. At each time-step, a tribe member dies, or a new member is born. The tribe can only eat after feeding their god, and so when there are $n$ people, the probability of a death is proportional to $n + 1$ because of the fact that they always have to feed one extra person; the probability of birth is proportional to the number of people $n$ (with the same proportionality constant). A birth and a death cannot occur together in the same time-step. In return for the food, if the tribe dies out, the omnipotent being introduces a new person at the next time step.
(4 points) Find the transition probabilities for the model
(6 points) Solve for the stationary distribution by solving . Hint: Solve for in terms of and see if you can find a pattern that you can verify inductively
(3 points) Is this a stationary probability; i.e., do we have ?
A professor continually gives exams to her students. She can give three possible types of exams, and her class is graded as either having done well or badly. Let $p_i$ denote the probability that the class does well on a type $i$ exam, and suppose that $p_1 = 0.3, p_2 = 0.6 \AND p_3 = 0.9$. If the class does well on an exam, then the next exam is equally likely to be any of the three types. If the class does badly, then the next exam is always type $1$.
Let and be two independent Poisson processes with rate parameters and , measuring the number of customers coming into stores and respectively.
Suppose that the probability to win a game is . You play this game repeatedly. Let represent the outcome of game . Suppose you bet an amount on the game based on how you have done in the previous games (the outcomes ). If you win, you get dollarydoos and if you lose, your net fortune goes down by . Suppose you start with an initial fortune of .
(4 points) Represent , your fortune after games in terms of the bet amounts and outcomes .
(4 points) Compute the expected value of for any .
(4 points) Is a martingale with respect to the outcomes of the games . That is, do we have
Justify your answer.
(5 points) Is a martingale? Justify your answer.
Let be a Poisson process of rate λ, representing the arrival process of customers entering a store. Each customer spends a duration in the store that is a random variable with exponential distribution with parameter . The customer durations are independent of each other and the arrival process.
(5 points) Find an expression for where is and is .
(8 points) Determine where the total number of customers who have arrived and left by time $t$. Hint: Represent as a sum of indicators.
(3 points) What happens to as . Interpret your answer.