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Random Variables Random Variable A variable is a quantity whose value changes. (compared with constant) A random variable is also a variable but its value must be the outcome of an experiment. Also, its value must be numeric. Random variable Definition: A random variable is a numerical description of the outcome of an experiment. Example: X=number of heads after tossing a fair coin 100 times Y=number of 6’s after rolling a fair die 100 times Z=number of A’s in this class. A=amount of time you spent watching tv every week. Types of random variable Discrete random variable: A random variable assuming either finite number of values or an infinite sequence of values. Continuous random variable: A random variable assuming any numerical value in an interval or collecting of intervals. Discrete random variable Example: Counts: Numeric value for qualitative variable: gender, occupation, Ordinal variable: 1=not satisfactory at all, 2=somewhat dissatisfactory, 3=somewhat satisfactory, 4=very satisfactory Continuous random variable Example: Interval and ratio variables: income, time spent, length, weight, distance, etc. *** sometimes, a continuous random variable could be used as a discrete one. Example: income: 1=less than 40K, 2=40K—60K, 3=60K—80K, 4=80K—100k, 5=100K+ *** also, the line between continuous and discrete is not always clear. (ex. units used in description or rounding). How to describe random variables Example: x 1 2 3 4 5 f(x) 0.2 0.2 0.2 0.2 0.2 Probability Distribution It is more often called: probability density function, or PDF. From the PDF, we can see whether the sample points are equally likely or not. Example: X=outcome of rolling a fair die X 1 2 3 4 5 6 probability 1/6 1/6 1/6 1/6 1/6 1/6 Conditions for a valid PDF PDF is not just a table of numbers, it has to satisfy some conditions to be a valid one: 1. f(x) must be non-negative. 2. the sum of f(x) for all x in the sample space must be ONE. Example 1 x f(x) 1 0 2 1.5 3 0.3 4 0.1 Example 2 x f(x) -2 0.3 0 0.2 1 0.4 2 0.1 Example 3 x f(x) -2 0.6 -1 0.1 0 0.1 1 0 2 0.1 Example 4 x f(x) -2 -0.2 -1 0.5 0 0.2 1 0.4 2 0.1 Another look at rolling dies When all the sample points in the sample space have equal probability, we call this kind of probability distribution discrete uniform probability function. If there are n sample points and all the points are equally likely, then the probability of each point is: 1/n. Ways to describe discrete random variables PDF is always a way to describe a random variable. There are also other ways: Expected value (mean) Variance Expected Value Previously, we know that the mean is the sum over the number of cases. BUT, that is under the assumption that all the points are equally likely. What if they are not? Expected value Suppose X is a discrete random variable and p(x) is its pdf, then its mean and variance are: Mean: Expected value In example 2 above, the mean of x is: -0.6+0+0.4+0.2=0 x f(x) xf(x) -2 0.3 -0.6 0 0.2 0 1 0.4 0.4 2 0.1 0.2 Properties of the expected value E(X+Y)=E(X)+E(Y) E(X+c)=E(X)+c E(aX+bY)=aE(X)+bE(Y) Again, using numbers in example 2, let Y=X+2, then E(Y)=0+.4+1.2+0.4 =2=E(X)+2 Y f(Y) Yf(Y) 0 0.3 0 2 0.2 0.4 3 0.4 1.2 4 0.1 0.4