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Chapter 5 Z-Scores Review ► We have finished the basic elements of descriptive statistics. ► Now we will begin to develop the concepts and skills that form the foundation for inferential statistics. Review (cont.) ► Chapter 5: Present a method for describing the exact location of an individual score relative to the other scores in a distribution. ► Chapter 6: Determine probability values associated with different locations in a distribution of scores ► Chapter 7: Apply skills from Ch. 5 & 6 to sample means instead of individual scores. Z-Scores ► Purpose of z-scores, or standard scores, is to identify and describe the exact location of every score in a distribution. ► To do this, we use the mean and standard deviation. Z-Scores ►A statistical technique that uses the mean and the standard deviation to transform each score (X value) into a z-score or a standard score. ► Purpose of a z-score or a standard score is to identify the exact location of every score in a distribution. Why are z-scores useful? ► If you got a 76 on a test, how did you do? ► You would need more information. ► You need to know the other scores in the distribution. ► What is the mean? Why are z-scores useful? (cont.) ► Knowing the mean is not enough. ► You also need to know the standard deviation. ► The relative location within the distribution depends on the mean and the statistical deviation as well as your score. Figure 5.1 Copyright © 2002 Wadsworth Group. Wadsworth is an imprint of the Wadsworth Group, a division of Thomson Learning Two distributions of exam scores Score is in the extreme right hand tail – one of the highest in the distribution Score is only slightly above average. Purpose for z-scores ►A score by itself does not necessarily provide much information about its position within a distribution These are called raw scores ► To make raw scores more meaningful, they are often transformed into new values that contain more information. ► This transformation is one purpose for zscores. Purpose for z-scores (cont.) ► We can transform scores into z-scores to find out exactly where the original scores are located. ► A second purpose is to standardize an entire distribution. IQ scores ►All are standardized with a mean of 100 and s.d. of 15 ►An IQ score of 95 is slightly below average and an IQ score of 145 is extremely high no matter what IQ test To describe the exact location of the score within a distribution ►A z-score transforms an X score into a signed +/- number + above the mean - below the mean The number tells the distance between the score and the mean in terms of the number of standard deviations. Example ► In a distribution of standardized IQ scores with m = 100 and s = 15 and a score of X=130 ► The score of X=130 could be transformed into z= +2.00 ► z value indicates + (above the mean) ► by a distance of 2 standard deviations (30 points) Definition ►A z-score Specifies the precise location of each X value with a distribution The sign of +/- signifies whether the score is above or below the mean The numerical value of the z-score specifies the distance from the mean by counting the number of standard deviations between the X and m. Z-scores ► Consist of two parts +/ Magnitude ► Both parts are necessary to describe completely where a raw score is located within a distribution. Copyright © 2002 Wadsworth Group. Wadsworth is an imprint of the Wadsworth Group, a division of Thomson Learning Figure 5.2 The relationship between z-scores and locations in a distribution a z-score of z = +1.00 corresponds to a position exactly 1 standard deviation above the mean. ► a z-score of z = +2.00 corresponds to a position exactly 2 standard deviations above the mean. ► The numerical value tells you the number of standard deviations from the mean. ► Figure 5.1 Two distributions of exam scores Copyright © 2002 Wadsworth Group. Wadsworth is an imprint of the Wadsworth Group, a division of Thomson Learning Now use a z-score to describe the position of X=76. Z= +2.00 Z= +0.50 The score is located above the mean by exactly 2 s.d. The score is located above the mean by 1/2 s.d. Learning Check ►A negative z-score always indicates a location below the mean. ► What z-score value identifies each of the following locations in a distribution? Above the mean by 2 s.d. Below the mean by ½ s.d. Above the mean by ¼ s.d. Below the mean by 3 s.d. Learning Check a population with m = 50 and s = 10, find the z-score for each of the following scores: ► For X = 55 X = 40 X = 30 Z= +0.50 Z= - 1.00 Z = - 2.00 Copyright © 2002 Wadsworth Group. Wadsworth is an imprint of the Wadsworth Group, a division of Thomson Learning Figure 5.4 A z-score transformation 10 30 40 = 50 Learning Check a population with m = 50 and s = 10, find the X value corresponding to each of the following z-scores: ► For z = + 1.00 z = - 0.50 z = + 2.00 X= 60 X = 45 X = 70 Copyright © 2002 Wadsworth Group. Wadsworth is an imprint of the Wadsworth Group, a division of Thomson Learning Figure 5.4 A z-score transformation 10 30 40 = 50 60 70 Formula for transforming z-scores ►z =X–m s Example distribution of scores has a mean of m = 100 and a standard deviation of s = 10. What z-score corresponds to a score of X=120 in this distribution? Z = X – m = 120-100 = 20 = 2.00 s 10 10 ►A Transforming z-scores into X values ►X = m + zs = 60 + (-2.00)(5) = 60 + (-10.00) = 50 m= 60 s= 5 Z = -2.00 Using z-scores to Standardize a Distribution ► When an entire population of scores is transformed into z-scores The transformation does not change the shape of the population but; The mean is transformed into a value of zero; The s.d. is transformed into a value of 1. Standardized Distribution ►A standardized distribution is composed of scores that have been transformed to create predetermined values for m and s. ► Standardized distributions are used to make dissimilar distributions comparable. Using z-scores to Make Comparisons ► Example: pg. 112-113 ► Psychology score = 60 m = 50 and s = 10 ► Biology score = 56 m = 48 and s = 4 ► z= X – m = 60-50 = 10 = + 1.0 s ► z= 10 10 X – m = 56-48 = 8 = +2.0 s 4 4