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Chi-square = 2.85 Chi-square crit = 5.99 Achievement is unrelated to whether or not a child attended preschool.

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Presentation on theme: "Chi-square = 2.85 Chi-square crit = 5.99 Achievement is unrelated to whether or not a child attended preschool."— Presentation transcript:

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3 Chi-square = 2.85 Chi-square crit = 5.99 Achievement is unrelated to whether or not a child attended preschool.

4 2 as a test for goodness of fit
So far The expected frequencies that we have calculated come from the data They test rather or not two variables are related

5 2 as a test for goodness of fit
But what if: You have a theory or hypothesis that the frequencies should occur in a particular manner?

6 Example M&Ms claim that of their candies: 30% are brown 20% are red
20% are yellow 10% are blue 10% are orange 10% are green

7 Example Based on genetic theory you hypothesize that in the population: 45% have brown eyes 35% have blue eyes 20% have another eye color

8 To solve you use the same basic steps as before (slightly different order)
1) State the hypothesis 2) Find 2 critical 3) Create data table 4) Calculate the expected frequencies 5) Calculate 2 6) Decision 7) Put answer into words

9 Example M&Ms claim that of their candies: 30% are brown 20% are red
20% are yellow 10% are blue 10% are orange 10% are green

10 Example Four 1-pound bags of plain M&Ms are purchased
Each M&Ms is counted and categorized according to its color Question: Is M&Ms “theory” about the colors of M&Ms correct?

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12 Step 1: State the Hypothesis
H0: The data do fit the model i.e., the observed data does agree with M&M’s theory H1: The data do not fit the model i.e., the observed data does not agree with M&M’s theory NOTE: These are backwards from what you have done before

13 Step 2: Find 2 critical df = number of categories - 1

14 Step 2: Find 2 critical df = number of categories - 1 df = 6 - 1 = 5
 = .05 2 critical = 11.07

15 Step 3: Create the data table

16 Step 3: Create the data table
Add the expected proportion of each category

17 Step 4: Calculate the Expected Frequencies

18 Step 4: Calculate the Expected Frequencies
Expected Frequency = (proportion)(N)

19 Step 4: Calculate the Expected Frequencies
Expected Frequency = (.30)(2081) =

20 Step 4: Calculate the Expected Frequencies
Expected Frequency = (.20)(2081) =

21 Step 4: Calculate the Expected Frequencies
Expected Frequency = (.20)(2081) =

22 Step 4: Calculate the Expected Frequencies
Expected Frequency = (.10)(2081) =

23 Step 5: Calculate 2 O = observed frequency E = expected frequency

24 2

25 2

26 2

27 2

28 2

29 2 15.52

30 Step 6: Decision Thus, if 2 > than 2critical
Reject H0, and accept H1 If 2 < or = to 2critical Fail to reject H0

31 Step 6: Decision Thus, if 2 > than 2critical
2 = 15.52 2 crit = 11.07 Thus, if 2 > than 2critical Reject H0, and accept H1 If 2 < or = to 2critical Fail to reject H0

32 Step 7: Put answer into words
H1: The data do not fit the model M&M’s color “theory” did not significantly (.05) fit the data

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34 Practice Among women in the general population under the age of 40:
60% are married 23% are single 4% are separated 12% are divorced 1% are widowed

35 Practice You sample 200 female executives under the age of 40
Question: Is marital status distributed the same way in the population of female executives as in the general population ( = .05)?

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37 Step 1: State the Hypothesis
H0: The data do fit the model i.e., marital status is distributed the same way in the population of female executives as in the general population H1: The data do not fit the model i.e., marital status is not distributed the same way in the population of female executives as in the general population

38 Step 2: Find 2 critical df = number of categories - 1

39 Step 2: Find 2 critical df = number of categories - 1 df = 5 - 1 = 4
 = .05 2 critical = 9.49

40 Step 3: Create the data table

41 Step 4: Calculate the Expected Frequencies

42 Step 5: Calculate 2 O = observed frequency E = expected frequency

43 2 19.42

44 Step 6: Decision Thus, if 2 > than 2critical
Reject H0, and accept H1 If 2 < or = to 2critical Fail to reject H0

45 Step 6: Decision Thus, if 2 > than 2critical
2 = 19.42 2 crit = 9.49 Thus, if 2 > than 2critical Reject H0, and accept H1 If 2 < or = to 2critical Fail to reject H0

46 Step 7: Put answer into words
H1: The data do not fit the model Marital status is not distributed the same way in the population of female executives as in the general population ( = .05)

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48 Practice Is there a significant ( = .05) relationship between gender and a persons favorite Thanksgiving “side” dish? Each participant reported his or her most favorite dish.

49 Results Side Dish Gender

50 Step 1: State the Hypothesis
H1: There is a relationship between gender and favorite side dish Gender and favorite side dish are independent of each other

51 Step 3: Find 2 critical df = (R - 1)(C - 1) df = (2 - 1)(3 - 1) = 2
 = .05 2 critical = 5.99

52 Results Side Dish Gender

53 Step 5: Calculate 2

54 Step 6: Decision Thus, if 2 > than 2critical
Reject H0, and accept H1 If 2 < or = to 2critical Fail to reject H0

55 Step 6: Decision Thus, if 2 > than 2critical
2 = 13.15 2 crit = 5.99 Thus, if 2 > than 2critical Reject H0, and accept H1 If 2 < or = to 2critical Fail to reject H0

56 Step 7: Put answer into words
H1: There is a relationship between gender and favorite side dish A person’s favorite Thanksgiving side dish is significantly (.05) related to their gender


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