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Practice Which is more likely: at least one ace with 4 throws of a fair die or at least one double ace in 24 throws of two fair dice? This is known as.

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Presentation on theme: "Practice Which is more likely: at least one ace with 4 throws of a fair die or at least one double ace in 24 throws of two fair dice? This is known as."— Presentation transcript:

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2 Practice Which is more likely: at least one ace with 4 throws of a fair die or at least one double ace in 24 throws of two fair dice? This is known as DeMere's problem, named after Chevalier De Mere. Blaise Pascal later solved this problem. 

3 Binomial Distribution
p = .482 of zero aces = .518 at least one ace will occur

4 Binomial Distribution
p = .508 of zero double aces = .492 at least one double ace will occur

5 Practice Which is more likely: at least one ace with 4 throws of a fair die or at least one double ace in 24 throws of two fair dice? This is known as DeMere's problem, named after Chevalier De Mere. More likely at least one ace with 4 throws will occur

6 Example You give 100 random students a questionnaire designed to measure attitudes toward living in dormitories Scores range from 1 to 7 (1 = unfavorable; 4 = neutral; 7 = favorable) You wonder if the mean score of the population is different then 4

7 Hypothesis Alternative hypothesis H1: sample = 4
In other words, the population mean will be different than 4

8 Hypothesis Alternative hypothesis Null hypothesis H1: sample = 4
In other words, the population mean will not be different than 4

9 Results N = 100 X = 4.51 s = 1.94 Notice, your sample mean is consistent with H1, but you must determine if this difference is simply due to chance

10 Results N = 100 X = 4.51 s = 1.94 To determine if this difference is due to chance you must calculate an observed t value

11 Observed t-value tobs = (X - ) / Sx

12 Observed t-value tobs = (X - ) / Sx
This will test if the null hypothesis H0:  sample = 4 is true The bigger the tobs the more likely that H1:  sample = 4 is true

13 Observed t-value tobs = (X - ) / Sx Sx = S / N

14 Observed t-value tobs = (X - ) / .194 .194 = 1.94/ 100

15 Observed t-value tobs = (4.51 – 4.0) / .194

16 Observed t-value 2.63 = (4.51 – 4.0) / .194

17 t distribution

18 t distribution tobs = 2.63

19 t distribution tobs = 2.63 Next, must determine if this t value happened due to chance or if represent a real difference in means. Usually, we want to be 95% certain.

20 t critical To find out how big the tobs must be to be significantly different than 0 you find a tcrit value. Calculate df = N - 1 Page 747 First Column are df Look at an alpha of .05 with two-tails

21 t distribution tobs = 2.63

22 t distribution tcrit = -1.98 tcrit = 1.98 tobs = 2.63

23 t distribution tcrit = -1.98 tcrit = 1.98 tobs = 2.63

24 t distribution Reject H0:  sample = 4 tcrit = -1.98 tcrit = 1.98
tobs = 2.63 If tobs fall in critical area reject the null hypothesis Reject H0:  sample = 4

25 t distribution Do not reject H0:  sample = 4 tcrit = -1.98
tobs = 2.63 If tobs does not fall in critical area do not reject the null hypothesis Do not reject H0:  sample = 4

26 Decision Since tobs falls in the critical region we reject Ho and accept H1 It is statistically significant, students ratings of the dorms is different than 4. p < .05

27 Example You wonder if the average IQ score of students at Villanova significantly different (at alpha = .05)than the average IQ of the population (which is 100). You sample the students in this room. N = 54 X = 130 s = 18.4

28 The Steps Try to always follow these steps!

29 Step 1: Write out Hypotheses
Alternative hypothesis H1: sample = 100 Null hypothesis H0: sample = 100

30 Step 2: Calculate the Critical t
N = 54 df = 53  = .05 tcrit = 2.0

31 Step 3: Draw Critical Region
tcrit = -2.00 tcrit = 2.00

32 Step 4: Calculate t observed
tobs = (X - ) / Sx

33 Step 4: Calculate t observed
tobs = (X - ) / Sx Sx = S / N

34 Step 4: Calculate t observed
tobs = (X - ) / Sx 2.5 = 18.4 / 54

35 Step 4: Calculate t observed
tobs = (X - ) / Sx 12 = ( ) / 2.5 2.5 = 18.4 / 54

36 Step 5: See if tobs falls in the critical region
tcrit = -2.00 tcrit = 2.00

37 Step 5: See if tobs falls in the critical region
tcrit = -2.00 tcrit = 2.00 tobs = 12

38 Step 6: Decision If tobs falls in the critical region:
Reject H0, and accept H1 If tobs does not fall in the critical region: Fail to reject H0

39 Step 7: Put answer into words
We reject H0 and accept H1. The average IQ of students at Villanova is statistically different ( = .05) than the average IQ of the population.

40 Practice You recently finished giving 5 of your friends the MMPI paranoia measure. Is your friends average average paranoia score significantly ( = .10) different than the average paranoia of the population ( = 56.1)?

41 Scores

42 Step 1: Write out Hypotheses
Alternative hypothesis H1: sample = 56.1 Null hypothesis H0: sample = 56.1

43 Step 2: Calculate the Critical t
N = 5 df =4  = .10 tcrit = 2.132

44 Step 3: Draw Critical Region
tcrit = tcrit = 2.132

45 Step 4: Calculate t observed
tobs = (X - ) / Sx -.48 = ( ) / 1.88 1.88 = 4.21/ 5

46 Step 5: See if tobs falls in the critical region
tcrit = tcrit = 2.132 tobs = -.48

47 Step 6: Decision If tobs falls in the critical region:
Reject H0, and accept H1 If tobs does not fall in the critical region: Fail to reject H0

48 Step 7: Put answer into words
We fail to reject H0 The average paranoia of your friends is not statistically different ( = .10) than the average paranoia of the population.

49 SPSS

50

51 One-tailed test In the examples given so far we have only examined if a sample mean is different than some value What if we want to see if the sample mean is higher or lower than some value This is called a one-tailed test

52 Remember You recently finished giving 5 of your friends the MMPI paranoia measure. Is your friends average paranoia score significantly ( = .10) different than the average paranoia of the population ( = 56.1)?

53 Hypotheses Alternative hypothesis Null hypothesis H1: sample = 56.1

54 What if. . . You recently finished giving 5 of your friends the MMPI paranoia measure. Is your friends average paranoia score significantly ( = .10) lower than the average paranoia of the population ( = 56.1)?

55 Hypotheses Alternative hypothesis Null hypothesis
H1: sample < 56.1 Null hypothesis H0: sample = or > 56.1

56 Step 2: Calculate the Critical t
N = 5 df =4  = .10 Since this is a “one-tail” test use the one-tailed column Note: one-tail = directional test tcrit = If H1 is < then tcrit = negative If H1 is > then tcrit = positive

57 Step 3: Draw Critical Region
tcrit =

58 Step 4: Calculate t observed
tobs = (X - ) / Sx

59 Step 4: Calculate t observed
tobs = (X - ) / Sx -.48 = ( ) / 1.88 1.88 = 4.21/ 5

60 Step 5: See if tobs falls in the critical region
tcrit =

61 Step 5: See if tobs falls in the critical region
tcrit = tobs = -.48

62 Step 6: Decision If tobs falls in the critical region:
Reject H0, and accept H1 If tobs does not fall in the critical region: Fail to reject H0

63 Step 7: Put answer into words
We fail to reject H0 The average paranoia of your friends is not statistically less then ( = .10) the average paranoia of the population.

64 Practice You just created a “Smart Pill” and you gave it to 150 subjects. Below are the results you found. Did your “Smart Pill” significantly ( = .05) increase the average IQ scores over the average IQ of the population ( = 100)? X = 103 s = 14.4

65 Step 1: Write out Hypotheses
Alternative hypothesis H1: sample > 100 Null hypothesis H0: sample < or = 100

66 Step 2: Calculate the Critical t
N = 150 df = 149  = .05 tcrit = 1.645

67 Step 3: Draw Critical Region
tcrit = 1.645

68 Step 4: Calculate t observed
tobs = (X - ) / Sx 2.54 = ( ) / 1.18 1.18=14.4 / 150

69 Step 5: See if tobs falls in the critical region
tcrit = 1.645 tobs = 2.54

70 Step 6: Decision If tobs falls in the critical region:
Reject H0, and accept H1 If tobs does not fall in the critical region: Fail to reject H0

71 Step 7: Put answer into words
We reject H0 and accept H1. The average IQ of the people who took your “Smart Pill” is statistically greater ( = .05) than the average IQ of the population.

72

73 So far. . . We have been doing hypothesis testing with a single sample
We find the mean of a sample and determine if it is statistically different than the mean of a population

74 Basic logic of research

75 Start with two equivalent groups of subjects

76 Treat them alike except for one thing

77 See if both groups are different at the end

78 Notice This means that we need to see if two samples are statistically different from each other We can use the same logic we learned earlier with single sample hypothesis testing

79 Example You just invented a “magic math pill” that will increase test scores. You give the pill to 4 subjects and another 4 subjects get no pill You then examine their final exam grades

80 Hypothesis Two-tailed
Alternative hypothesis H1: pill = nopill In other words, the means of the two groups will be significantly different Null hypothesis H0: pill = nopill In other words, the means of the two groups will not be significantly different

81 Hypothesis One-tailed
Alternative hypothesis H1: pill > nopill In other words, the pill group will score higher than the no pill group Null hypothesis H0: pill < or = nopill In other words, the pill group will be lower or equal to the no pill group

82 For current example, lets just see if there is a difference
Alternative hypothesis H1: pill = nopill In other words, the means of the two groups will be significantly different Null hypothesis H0: pill = nopill In other words, the means of the two groups will not be significantly different

83 Results Pill Group 5 3 4 No Pill Group 1 2 4 3

84 Remember before. . . Step 2: Calculate the Critical t
df = N -1

85 Now Step 2: Calculate the Critical t
df = N1 + N2 - 2 df = = 6  = .05 t critical = 2.447

86 Step 3: Draw Critical Region
tcrit = tcrit = 2.447

87 Remember before. . . Step 4: Calculate t observed
tobs = (X - ) / Sx

88 Now Step 4: Calculate t observed
tobs = (X1 - X2) / Sx1 - x2

89 Now Step 4: Calculate t observed
tobs = (X1 - X2) / Sx1 - x2

90 Now Step 4: Calculate t observed
tobs = (X1 - X2) / Sx1 - x2 X1 = 3.75 X2 = 2.50

91 Now Step 4: Calculate t observed
tobs = (X1 - X2) / Sx1 - x2

92 Standard Error of a Difference
Sx1 - x2 When the N of both samples are equal If N1 = N2: Sx1 - x2 = Sx12 + Sx22

93 Results Pill Group 5 3 4 No Pill Group 1 2 4 3

94 Standard Deviation S = -1

95 Standard Deviation Pill Group 5 3 4 No Pill Group 1 2 4 3 X2= 10

96 Standard Deviation Pill Group 5 3 4 No Pill Group 1 2 4 3 X2= 10

97 Standard Deviation Pill Group 5 3 4 No Pill Group 1 2 4 3 X2= 10
Sx= .48 Sx= . 645

98 Standard Error of a Difference
Sx1 - x2 When the N of both samples are equal If N1 = N2: Sx1 - x2 = Sx12 + Sx22

99 Standard Error of a Difference
Sx1 - x2 When the N of both samples are equal If N1 = N2: Sx1 - x2 = (.48)2 + (.645)2

100 Standard Error of a Difference
Sx1 - x2 When the N of both samples are equal If N1 = N2: Sx1 - x2 = (.48)2 + (.645)2 = .80

101 Standard Error of a Difference Raw Score Formula
When the N of both samples are equal If N1 = N2: Sx1 - x2 =

102 X1= 15 X12= 59 N1 = 4 X2= 10 X22= 30 N2 = 4 Sx1 - x2 =

103 X1= 15 X12= 59 N1 = 4 X2= 10 X22= 30 N2 = 4 Sx1 - x2 = 10 15

104 Sx1 - x2 = X1= 15 X12= 59 N1 = 4 X2= 10 X22= 30 N2 = 4 10 15

105 Sx1 - x2 = X1= 15 X12= 59 N1 = 4 X2= 10 X22= 30 N2 = 4 10 15
4 (4 - 1)

106 Sx1 - x2 = X1= 15 X12= 59 N1 = 4 X2= 10 X22= 30 N2 = 4 10 15
56.25 30 25 4 4 12

107 .80 = X1= 15 X12= 59 N1 = 4 X2= 10 X22= 30 N2 = 4 10 15 59
56.25 30 25 7.75 4 4 12

108 Now Step 4: Calculate t observed
tobs = (X1 - X2) / Sx1 - x2 Sx1 - x2 = .80 X1 = 3.75 X2 = 2.50

109 Now Step 4: Calculate t observed
Sx1 - x2 = .80 X1 = 3.75 X2 = 2.50

110 Now Step 4: Calculate t observed
1.56 = ( ) / .80 Sx1 - x2 = .80 X1 = 3.75 X2 = 2.50

111 Step 5: See if tobs falls in the critical region
tcrit = tcrit = 2.447

112 Step 5: See if tobs falls in the critical region
tcrit = tcrit = 2.447 tobs = 1.56

113 Step 6: Decision If tobs falls in the critical region:
Reject H0, and accept H1 If tobs does not fall in the critical region: Fail to reject H0

114 Step 7: Put answer into words
We fail to reject H0. The final exam grades of the “pill group” were not statistically different ( = .05) than the final exam grades of the “no pill” group.

115 SPSS

116 Practice You wonder if psychology majors have higher IQs than sociology majors ( = .05) You give an IQ test to 4 psychology majors and 4 sociology majors

117 Results Psychology 110 150 140 135 Sociology 90 95 80 98

118 Step 1: Hypotheses Alternative hypothesis Null hypothesis
H1: psychology > sociology Null hypothesis H0: psychology = or < sociology

119 Step 2: Calculate the Critical t
df = N1 + N2 - 2 df = = 6  = .05 One-tailed t critical = 1.943

120 Step 3: Draw Critical Region
tcrit = 1.943

121 Now Step 4: Calculate t observed
tobs = (X1 - X2) / Sx1 - x2

122 X1= 535 X12= 72425 N1 = 4 X1 = X2= 363 X22= 33129 N2 = 4 X2 = 90.75 9.38 = 363 535 72425 33129 4 4 4 (4 - 1)

123 Step 4: Calculate t observed
4.58 = ( ) / 9.38 Sx1 - x2 = 9.38 X1 = X2 = 90.75

124 Step 5: See if tobs falls in the critical region
tcrit = 1.943 tobs = 4.58

125 Step 6: Decision If tobs falls in the critical region:
Reject H0, and accept H1 If tobs does not fall in the critical region: Fail to reject H0

126 Step 7: Put answer into words
We Reject H0, and accept H1 Psychology majors have significantly ( = .05) higher IQs than sociology majors.

127 SPSS Problem #2 7.37 (TAT) 7.11 (Anorexia)


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