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Let Z be a random variable whose outcomes follow a standard normal distribution. Recall that a
standard normal distribution has a mean of 0(=0) and a standard deviation of 1(=1). Find the
probability of an outcome that is between -1.52 and 0.3 . P(1.52

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  • 1. Let Z be a random variable whose outcomes follow a standard normal distribution. Recall that a standard normal distribution has a mean of 0(=0) and a standard deviation of 1(=1). Find the probability of an outcome that is between -1.52 and 0.3 . P(1.52