Chapter 16. Random Variables. Copyright 2010 Pearson Education, Inc.

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Transcription:

Chapter 16 Random Variables Copyright 2010 Pearson Education, Inc.

Expected Value: Center A random variable assumes a value based on the outcome of a random event. We use a capital letter, like X, to denote a random variable. A particular value of a random variable will be denoted with the corresponding lower case letter, in this case x. Copyright 2010 Pearson Education, Inc. Slide 16-3

Expected Value: Center (cont.) There are two types of random variables: Discrete random variables can take one of a countable number of distinct outcomes. Example: Number of credit hours Continuous random variables can take any numeric value within a range of values. Example: Cost of books this term Copyright 2010 Pearson Education, Inc. Slide 16-4

Expected Value: Center (cont.) A probability model for a random variable consists of: The collection of all possible values of a random variable, and the probabilities that the values occur. Of particular interest is the value we expect a random variable to take on, notated μ (for population mean) or E(X) for expected value. Copyright 2010 Pearson Education, Inc. Slide 16-5

Expected Value: Center (cont.) The expected value of a (discrete) random variable can be found by summing the products of each possible value by the probability that it occurs: E X x P x Note: Be sure that every possible outcome is included in the sum and verify that you have a valid probability model to start with. Copyright 2010 Pearson Education, Inc. Slide 16-6

First Center, Now Spread For data, we calculated the standard deviation by first computing the deviation from the mean and squaring it. We do that with discrete random variables as well. The variance for a random variable is: 2 2 Var X x P x The standard deviation for a random variable is: SD X Var X Copyright 2010 Pearson Education, Inc. Slide 16-7

More About Means and Variances Adding or subtracting a constant from data shifts the mean but doesn t change the variance or standard deviation: E(X ± c) = E(X) ± c Var(X ± c) = Var(X) Example: Consider everyone in a company receiving a $5000 increase in salary. Copyright 2010 Pearson Education, Inc. Slide 16-8

More About Means and Variances (cont.) In general, multiplying each value of a random variable by a constant multiplies the mean by that constant and the variance by the square of the constant: E(aX) = ae(x) Var(aX) = a 2 Var(X) Example: Consider everyone in a company receiving a 10% increase in salary. Copyright 2010 Pearson Education, Inc. Slide 16-9

More About Means and Variances (cont.) In general, The mean of the sum of two random variables is the sum of the means. The mean of the difference of two random variables is the difference of the means. E(X ± Y) = E(X) ± E(Y) If the random variables are independent, the variance of their sum or difference is always the sum of the variances. Var(X ± Y) = Var(X) + Var(Y) Copyright 2010 Pearson Education, Inc. Slide 16-10

Continuous Random Variables Random variables that can take on any value in a range of values are called continuous random variables. Now, any single value won t have a probability, but Continuous random variables have means (expected values) and variances. We won t worry about how to calculate these means and variances in this course, but we can still work with models for continuous random variables when we re given the parameters. Copyright 2010 Pearson Education, Inc. Slide 16-11

Continuous Random Variables (cont.) Good news: nearly everything we ve said about how discrete random variables behave is true of continuous random variables, as well. When two independent continuous random variables have Normal models, so does their sum or difference. This fact will let us apply our knowledge of Normal probabilities to questions about the sum or difference of independent random variables. Copyright 2010 Pearson Education, Inc. Slide 16-12

What Can Go Wrong? Probability models are still just models. Models can be useful, but they are not reality. Question probabilities as you would data, and think about the assumptions behind your models. If the model is wrong, so is everything else. Copyright 2010 Pearson Education, Inc. Slide 16-13

What Can Go Wrong? (cont.) Don t assume everything s Normal. You must Think about whether the Normality Assumption is justified. Watch out for variables that aren t independent: You can add expected values for any two random variables, but you can only add variances of independent random variables. Copyright 2010 Pearson Education, Inc. Slide 16-14

What Can Go Wrong? (cont.) Don t forget: Variances of independent random variables add. Standard deviations don t. Don t forget: Variances of independent random variables add, even when you re looking at the difference between them. Don t write independent instances of a random variable with notation that looks like they are the same variables. Copyright 2010 Pearson Education, Inc. Slide 16-15

What have we learned? We know how to work with random variables. We can use a probability model for a discrete random variable to find its expected value and standard deviation. The mean of the sum or difference of two random variables, discrete or continuous, is just the sum or difference of their means. And, for independent random variables, the variance of their sum or difference is always the sum of their variances. Copyright 2010 Pearson Education, Inc. Slide 16-16

What have we learned? (cont.) Normal models are once again special. Sums or differences of Normally distributed random variables also follow Normal models. Copyright 2010 Pearson Education, Inc. Slide 16-17