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Review Ways to “see” data –Simple frequency distribution –Group frequency distribution –Histogram –Stem-and-Leaf Display –Describing distributions –Box-Plot.

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Presentation on theme: "Review Ways to “see” data –Simple frequency distribution –Group frequency distribution –Histogram –Stem-and-Leaf Display –Describing distributions –Box-Plot."— Presentation transcript:

1

2 Review Ways to “see” data –Simple frequency distribution –Group frequency distribution –Histogram –Stem-and-Leaf Display –Describing distributions –Box-Plot Measures of central tendency –Mean –Median –Mode

3 Review Measures of variability –Range –IQR –Standard deviation

4 Compute a standard deviation with the Raw-Score Method Previously learned the deviation formula –Good to see “what's going on” Raw score formula –Easier to calculate than the deviation formula –Not as intuitive as the deviation formula They are algebraically the same!!

5 Raw-Score Formula

6 Step 1: Create a table

7 Step 2: Square each value

8 Step 3: Sum

9 Step 4: Plug in values N = 5  X = 44  X 2 = 640

10 Step 4: Plug in values N = 5  X = 44  X 2 = 640 5 - 1 5

11 Step 4: Plug in values N = 5  X = 44  X 2 = 640 5 - 1 5 44

12 Step 4: Plug in values N = 5  X = 44  X 2 = 640 5 - 1 5 44 640

13 Step 5: Solve! 5 - 1 5 44 640 1936

14 Step 5: Solve! 4 5 44 640 1936 387.2

15 Step 5: Solve! 5 5 44 640 1936 387.2 63.2 Answer = 7.95

16 Practice You are interested in how citizens of the US feel about the president. You asked 8 people to rate the president on a 10 point scale. Describe how the country feels about the president -- be sure to report a measure of central tendency and the standard deviation. 8, 4, 9, 10, 6, 5, 7, 9

17 Central Tendency 8, 4, 9, 10, 6, 5, 7, 9 4, 5, 6, 7, 8, 9, 9, 10 Mean = 7.25 Median = (4.5) = 7.5 Mode = 9

18 Standard Deviation

19 Standard Deviation 452 58 8 8 - 1

20 Standard Deviation 58 452 8 8 - 1

21 Standard Deviation 452420.5 7

22 Standard Deviation 2.12

23

24 Variance The last step in calculating a standard deviation is to find the square root The number you are fining the square root of is the variance!

25 Variance S 2 =

26 Variance - 1 S 2 =

27 Practice Below are the test score of Joe and Bob. What are their means, medians, and modes? Who tended to have the most uniform scores (calculate the standard deviation and variance)? Joe 80, 40, 65, 90, 99, 90, 22, 50 Bob 50, 50, 40, 26, 85, 78, 12, 50

28 Practice Joe 22, 40, 50, 65, 80, 90, 90, 99 Mean = 67 Bob 12, 26, 40, 50, 50, 50, 78, 85 Mean = 48.88

29 Practice Joe 22, 40, 50, 65, 80, 90, 90, 99 Median = 72.5 Bob 12, 26, 40, 50, 50, 50, 78, 85 Median = 50

30 Practice Joe 22, 40, 50, 65, 80, 90, 90, 99 Mode = 90 Bob 12, 26, 40, 50, 50, 50, 78, 85 Mode = 50

31 Practice Joe 22, 40, 50, 65, 80, 90, 90, 99 S = 27.51; S 2 = 756.80 Bob 12, 26, 40, 50, 50, 50, 78, 85 S = 24.26; S 2 = 588.55 Thus, Bob’s scores were the most uniform

32 Review Ways to “see” data –Simple frequency distribution –Group frequency distribution –Histogram –Stem-and-Leaf Display –Describing distributions –Box-Plot Measures of central tendency –Mean –Median –Mode

33 Review Measures of variability –Range –IQR –Standard deviation –Variance

34 What if.... You recently finished taking a test that you received a score of 90 and the test scores were normally distributed. It was out of 200 points The highest score was 110 The average score was 95 The lowest score was 90

35 Z-score A mathematical way to modify an individual raw score so that the result conveys the score’s relationship to the mean and standard deviation of the other scores Transforms a distribution of scores so they have a mean of 0 and a SD of 1

36 Z-score Ingredients: X Raw score Mean of scores S The standard deviation of scores

37 Z-score

38 What it does x - Tells you how far from the mean you are and if you are > or < the mean S Tells you the “size” of this difference

39 Example Sample 1: X = 8 = 6 S = 5

40 Example Sample 1: X = 8 = 6 S = 5 Z score =.4

41 Example Sample 1: X = 8 = 6 S = 1.25

42 Example Sample 1: X = 8 = 6 S = 1.25 Z-score = 1.6

43 Example Sample 1: X = 8 = 6 S = 1.25 Z-score = 1.6 Note: A Z-score tells you how many SD above or below a mean a specific score falls!

44 Practice The history teacher Mr. Hand announced that the lowest test score for each student would be dropped. Jeff scored a 85 on his first test. The mean was 74 and the SD was 4. On the second exam, he made 150. The class mean was 140 and the SD was 15. On the third exam, the mean was 35 and the SD was 5. Jeff got 40. Which test should be dropped?

45 Practice Test #1 Z = (85 - 74) / 4 = 2.75 Test #2 Z = (150 - 140) / 15 =.67 Test #3 Z = (40 - 35) / 5 = 1.00

46 Practice

47 Did Ross do worse in the endurance challenge than in the throwing challenge? Did Monica do better in the throwing challenge than the endurance?

48 Practice = 34.6 = 7.4 S = 7.96 S = 2.41

49 Practice = 34.6 = 7.4 S = 7.96 S = 2.41

50 Practice = 34.6 = 7.4 S = 7.96 S = 2.41

51 Ross did worse in the throwing challenge than the endurance and Monica did better in the endurance than the throwing challenge. = 34.6 = 7.4 S = 7.96 S = 2.41

52

53 Shifting Gears

54 Question A random sample of 100 students found: –56 were psychology majors –32 were undecided –8 were math majors –4 were biology majors What proportion were psychology majors?.56

55 Question A random sample of 100 students found: –56 were psychology majors –32 were undecided –8 were math majors –4 were biology majors What is the probability of randomly selecting a psychology major?

56 Question A random sample of 100 students found: –56 were psychology majors –32 were undecided –8 were math majors –4 were biology majors What is the probability of randomly selecting a psychology major?.56

57 Probabilities The likelihood that something will occur Easy to do with nominal data! What if the variable was quantitative?

58 Extraversion

59 Openness to Experience

60 Neuroticism

61 Probabilities  Normality frequently occurs in many situations of psychology, and other sciences

62 COMPUTER PROG http://www.jcu.edu/math/isep/Quincunx/Qu incunx.html http://webphysics.davidson.edu/Applets/G alton/BallDrop.htmlhttp://webphysics.davidson.edu/Applets/G alton/BallDrop.html http://www.ms.uky.edu/~mai/java/stat/Galt onMachine.htmlhttp://www.ms.uky.edu/~mai/java/stat/Galt onMachine.html

63 Next step Z scores allow us to modify a raw score so that it conveys the score’s relationship to the mean and standard deviation of the other scores. Normality of scores frequently occurs in many situations of psychology, and other sciences Is it possible to apply Z score to the normal distribution to compute a probability?

64 Theoretical Normal Curve -3  -2  -1   1  2  3 

65 Theoretical Normal Curve -3  -2  -1   1  2  3 

66 Theoretical Normal Curve -3  -2  -1   1  2  3 

67 Theoretical Normal Curve -3  -2  -1   1  2  3  Note: A Z-score tells you how many SD above or below a mean a specific score falls!

68 Theoretical Normal Curve -3  -2  -1   1  2  3  Z-scores-3-2-10123

69 We can use the theoretical normal distribution to determine the probability of an event. For example, do you know the probability of getting a Z score of 0 or less? -3  -2  -1   1  2  3  Z-scores-3-2-10123.50

70 We can use the theoretical normal distribution to determine the probability of an event. For example, you know the probability of getting a Z score of 0 or less. -3  -2  -1   1  2  3  Z-scores-3-2-10123.50

71 With the theoretical normal distribution we know the probabilities associated with every z score! The probability of getting a score between a 0 and a 1 is -3  -2  -1   1  2  3  Z-scores-3-2-10123.3413.1587

72 What is the probability of getting a score of 1 or higher? -3  -2  -1   1  2  3  Z-scores-3-2-10123.3413.1587

73 These values are given in Appendix Z -3  -2  -1   1  2  3  Z-scores-3-2-10123.3413.1587

74 -3  -2  -1   1  2  3  Z-scores-3-2-10123.3413.1587 Mean to Z

75 -3  -2  -1   1  2  3  Z-scores-3-2-10123.3413.1587 Smaller Portion

76 -3  -2  -1   1  2  3  Z-scores-3-2-10123.84.1587 Larger Portion

77 Practice What proportion of the normal distribution is found in the following areas (hint: draw out the answer)? Between mean and z =.56? Above z = 2.25? Above z = -1.45

78 Practice What proportion of the normal distribution is found in the following areas (hint: draw out the answer)? Between mean and z =.56?.2123 Above z = 2.25? Above z = -1.45

79 Practice What proportion of the normal distribution is found in the following areas (hint: draw out the answer)? Between mean and z =.56?.2123 Above z = 2.25?.0122 Above z = -1.45

80 Practice What proportion of the normal distribution is found in the following areas (hint: draw out the answer)? Between mean and z =.56?.2123 Above z = 2.25?.0122 Above z = -1.45.9265

81 Practice What proportion of this class would have received an A on the last test if I gave A’s to anyone with a z score of 1.25 or higher?.1056

82 Example: IQ Mean IQ = 100 Standard deviation = 15 What proportion of people have an IQ of 120 or higher?

83 Step 1: Sketch out question -3  -2  -1   1  2  3 

84 Step 1: Sketch out question -3  -2  -1   1  2  3  120

85 Step 2: Calculate Z score -3  -2  -1   1  2  3  120 (120 - 100) / 15 = 1.33

86 Step 3: Look up Z score in Table -3  -2  -1   1  2  3  120 Z = 1.33.0918

87 Example: IQ A proportion of.0918 or 9.18 percent of the population have an IQ above 120. What proportion of the population have an IQ below 80?

88 Step 1: Sketch out question -3  -2  -1   1  2  3 

89 Step 1: Sketch out question -3  -2  -1   1  2  3  80

90 Step 2: Calculate Z score -3  -2  -1   1  2  3  80 (80 - 100) / 15 = -1.33

91 Step 3: Look up Z score in Table -3  -2  -1   1  2  3  80 Z = -1.33.0918

92 Example: IQ Mean IQ = 100 SD = 15 What proportion of the population have an IQ below 110?

93 Step 1: Sketch out question -3  -2  -1   1  2  3 

94 Step 1: Sketch out question -3  -2  -1   1  2  3  110

95 Step 2: Calculate Z score -3  -2  -1   1  2  3  (110 - 100) / 15 =.67 110

96 Step 3: Look up Z score in Table -3  -2  -1   1  2  3  Z =.67 110.7486

97 Example: IQ A proportion of.7486 or 74.86 percent of the population have an IQ below 110.

98 Finding the Proportion of the Population Between Two Scores What proportion of the population have IQ scores between 90 and 110?

99 Step 1: Sketch out question -3  -2  -1   1  2  3  11090 ?

100 Step 2: Calculate Z scores for both values Z = (X -  ) /  Z = (90 - 100) / 15 = -.67 Z = (110 - 100) / 15 =.67

101 Step 3: Look up Z scores -3  -2  -1   1  2  3 .67-.67.2486

102 Step 4: Add together the two values -3  -2  -1   1  2  3 .67-.67.4972

103 A proportion of.4972 or 49.72 percent of the population have an IQ between 90 and 110.

104 What proportion of the population have an IQ between 110 and 130?

105 Step 1: Sketch out question -3  -2  -1   1  2  3  110130 ?

106 Step 2: Calculate Z scores for both values Z = (X -  ) /  Z = (110 - 100) / 15 =.67 Z = (130 - 100) / 15 = 2.0

107 Step 3: Look up Z score -3  -2  -1   1  2  3 .672.0.4772

108 Step 3: Look up Z score -3  -2  -1   1  2  3 .672.0.4772.2486

109 Step 4: Subtract -3  -2  -1   1  2  3 .672.0.2286.4772 -.2486 =.2286

110 A proportion of.2286 or 22.86 percent of the population have an IQ between 110 and 130.

111

112 Finding a score when given a probability IQ scores – what is the range of IQ scores we expect 95% of the population to fall? “If I draw a person at random from this population, 95% of the time his or her score will lie between ___ and ___” Mean = 100 SD = 15

113 Step 1: Sketch out question ?100 ? 95%

114 Step 1: Sketch out question ?100 ? 95% 2.5%

115 Step 1: Sketch out question ?100 ? 95% 2.5% Z = 1.96Z = -1.96

116 Step 3: Find the X score that goes with the Z score Z score = 1.96 Z = (X -  ) /  1.96 = (X - 100) / 15 Must solve for X X =  + (z)(  ) X = 100 + (1.96)(15)

117 Step 3: Find the X score that goes with the Z score Z score = 1.96 Z = (X -  ) /  1.96 = (X - 100) / 15 Must solve for X X =  + (z)(  ) X = 100 + (1.96)(15) Upper IQ score = 129.4

118 Step 3: Find the X score that goes with the Z score Must solve for X X =  + (z)(  ) X = 100 + (-1.96)(15) Lower IQ score = 70.6

119 Step 1: Sketch out question 70.6100 129.4 95% 2.5% Z = 1.96Z = -1.96

120 Finding a score when given a probability “If I draw a person at random from this population, 95% of the time his or her score will lie between 70.6 and 129.4”

121 Practice GRE Score – what is the range of GRE scores we expect 90% of the population to fall? Mean = 500 SD = 100

122 Step 1: Sketch out question ?500 ? 90% 5% Z = 1.64Z = -1.64

123 Step 3: Find the X score that goes with the Z score X =  + (z)(  ) X = 500 + (1.64)(100) Upper score = 664 X =  + (z)(  ) X = 500 + (-1.64)(100) Lower score = 336

124 Finding a score when given a probability “If I draw a person at random from this population, 90% of the time his or her score will lie between 336 and 664”

125 Practice

126 The Neuroticism Measure = 23.32 S = 6.24 n = 54 How many people likely have a neuroticism score between 18 and 26?

127 Practice (18-23.32) /6.24 = -.85 area =.3023 ( 26-23.32)/6.26 =.43 area =.1664.3023 +.1664 =.4687.4687*54 = 25.31 or 25 people

128

129 SPSS PROGRAM: https://citrixweb.villanova.edu/Citrix/XenApp/auth/l ogin.aspx BASIC “HOW TO” http://www.psychology.ilstu.edu/jccutti/138web/sps s.html SPSS “HELP” is also good

130 SPSS PROBLEM #1 Page 65 Data 2.1 Turn in the SPSS output for 1) Mean, median, mode 2) Standard deviation 3) Frequency Distribution 4) Histogram


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