Suppose you roll two dice, and let X be sum of the dice. Then X is

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Presentation transcript:

Suppose you roll two dice, and let X be sum of the dice. Then X is A continuous random variable A discrete random variable A discreet random variable Both Neither

A continuous random variable can take any value between zero and one. True False

Let the random variable X be a random number with the uniform density curve given below. P (0.7 < X < 1.1) has value 0.30 0.40 0.70

Let X be a standard normal random variable Let X be a standard normal random variable. Which of the following probabilities is the smallest? P(-2<X<-1) P(0<X<2) P(X<1) P(X>2)

Consider the following probability histogram for a discrete random variable X. What is P(X < 3)? 0.10 0.25 0.35 0.65

Answers B, B, A (there is no area from 1 to 1.1), D, C