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Exercise: Empirical Rule Use the empirical rule to answer the following: ! Monthly maintenance costs are distributed normally with a µ=$250 and σ=$50 " 1) What percent of months have maintenance costs in the range of $200 to $300? " 2) What is the chance (i.e. probability) that a randomly chosen month has a maintenance cost of $150 or less? 1 Answer: " 1) " 2) 2 5.2 Properties of the Normal Distribution part 2 ! Standard Scores ! Finding percentiles when you can’t use the empirical rule (when the data value is something other than 1, 2 or 3 standard deviations from the mean) 3 Normal Percentiles ! What if we’re 1.5 standard deviations up from the mean? How do we compute such a percentile? ! Solution: Standard Scores 4 Standard Scores The number of standard deviations a data value lies above or below the mean is called its standard score (or z-score), defined by z = standard score = data value – mean standard deviation The standard score is positive for data values above the mean and negative for data values below the mean. 5 Standard Scores ! Example (continued): The Stanford-Binet IQ test is scaled so that scores have a mean of 100 and a standard deviation of 16. Find the standard scores for IQs of 85, 100, and 125. standard score for IQ of 85: z = 85 – 100 = -0.94 16 standard score for IQ of 100: z = 100 – 100 = 0.00 16 standard score for IQ of 125: z = 125 – 100 = 1.56 16 An IQ of 85 is 0.94 standard deviations below the mean. 6 Standard Scores ! What percentile are the following IQ scores? 85 (standard score: z = -0.94) " 100 (standard score: z = 0) " 125 (standard score: z = 1.56) " ! We can’t use the empirical rule here. ! We’ll have to use a table to find the percentages (Appendix A in our book). 7 A subset of Appendix A (shown here) is provided in Section 5.2 in the book. This table shows the percentage of observations below any given standard score. 8 What percent of observations are below a standard score of z = -0.94? The closest standard score is -0.95 and 17.11% of the observations are below a standard score of -0.95. 17% shaded 9 What percent of observations are below a standard score of z = 0? Ans: 50% 50% shaded A standard score of 0 is at the 50th percentile. 10 What percent of observations are below a standard score of z = 1.56? This standard score lies between 1.5 and 1.6 on the table. We can approximate the percentile for this standard score as (93.32% + 94.52%) 2 Or 93.92%, which is the 93.92nd percentile. 94% shaded 11 Standard Scores ! What percentile are the following IQ scores? " IQ of 85 (z=-0.94) is at the 17th percentile. " IQ of 100 (z=0) is at the 50th percentile " IQ of 125 (z=1.56) is at the 94th percentile. " Recall that negative z-scores are below the mean and positive z-scores are above the mean. ! Thus, we can get the percentiles even though we’re not exactly 1, 2 or 3 standard deviations from the mean. 12 Standard Scores ! We will use Appendix A from the book (a subset of that table was shown above) to compute percentiles and probabilities because it has finer resolution (more decimals). ! THIS TAKES PRACTICE! ! Active work: See worksheet on normal curve scores. 13 More Exercises: z-scores ! Assume you have a normal distribution. Use the z-score table in Appendix A to answer: " 1) What percent of observations lie below a zscore of 0? " 2) What percent of observations lie below a zscore of 1.72? 14 More Exercises: z-scores " 3) What percent of observations fall BETWEEN z-scores of 0 and 1.72? 15 5.2 Properties of the Normal Distribution part 3 ! Connecting z-scores to probabilities. 16 ! Example: The Stanford-Binet IQ test is normally distributed and scaled so that scores have a mean of 100 and a standard deviation of 16. 17 ! Example: The Stanford-Binet IQ test is normally distributed and scaled so that scores have a mean of 100 and a standard deviation of 16. " If you draw someone at random, what is the probability that they have an IQ score of 90 or less? " To answer this, we just need to know what percent of IQ scores are at 90 or lower. 18 ! Example: The Stanford-Binet IQ test is normally distributed with a mean of 100 and standard deviation of 16. Let X be an IQ score of a person. Short-hand notation: The 2 parameters needed to define a normal distribution. X ~ N(µ=100,σ=16) “is distributed” Normal 19 " If you draw someone at random, what is the probability that they have an IQ score of 90 or less? " We need to answer: When X ~ N(µ=100,σ=16), what is P(X ≤ 90)? X is a data value (or IQ score in this case). We will convert it to a z-score… 20 z = standard score = " P(X data value – mean standard deviation ≤ 90) = P( X –µ ≤ 90 –100 σ 16 ) = P(Z ≤ – 10/16) = P(Z ≤ – 0.63) = 0.2643 21 z = standard score = " P(X data value – mean standard deviation ≤ 90) = P(Z ≤ – 0.63) = 0.2643 Looked up on z-table An IQ score of 90 has a z-score of - 0.63 " The probability of randomly drawing someone with an IQ score of 90 or lower is 0.2643. 22 QUICK-CHECK: The Empirical Rule tells me the percent that is below an IQ of 90 has to be between16% (to the left of 1σ below the mean) and 50% (to the left of the mean itself). IQ 90 So, 26.43% is totally in-line with my Empirical Rule information because being 0.63 standard deviations is between 1 and 0 standard deviations down from the mean. 23 Using new notation, exercise 1: ! Let X ~ N(µ=40,σ=5). Find P(X < 51): 24 Using new notation, exercise 2: ! Suppose bowling scores are normally distributed with a mean of 186 and a standard deviation of 30. Find the percentage of games with a score of 120 or HIGHER. 25