Question: 3. Bayesian coin ip. Let us try out another prior for the Bayesian coin ip problem that we discussed in class. We new model the

3. Bayesian coin ip. Let us try out another prior for the Bayesian coin ip problem that we discussed in class. We new model the parameter of the Bernouilli as being uniform between 132 and 1. a. Briey justify the model and compute the probability that the result of the coin ip is heads or tails under this model. b. After the coin ip we update the distribution of the bias of the coin [i.e. the parameter of the Bernouilli that represents the coin flip] by conditioning it on the outcome. Compute the distribution if the outcome is tails and if the outcome is heads. Sketch any distributions you compute and explain why the drawing makes sense. c. lCirimpare the prior distribution for the bias that we discussed in class and the one in this model. Which one is more restrictive and why
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