Title: Chi-square test or c2 test
1Chi-square testorc2 test
2Chi-square test
- Used to test the counts of categorical data
- Three types
- Goodness of fit (univariate)
- Independence (bivariate)
- Homogeneity (univariate with two samples)
3c2 distribution
df3
df5
df10
4c2 distribution
- Different df have different curves
- Skewed right
- As df increases, curve shifts toward right
becomes more like a normal curve
5c2 assumptions
- SRS reasonably random sample
- Have counts of categorical data we expect each
category to happen at least once - Sample size to insure that the sample size is
large enough we should expect at least five in
each category. - Be sure to list expected counts!!
Combine these together All expected counts are
at least 5.
6c2 formula
7c2 Goodness of fit test
Based on df df number of categories - 1
- Uses univariate data
- Want to see how well the observed counts fit
what we expect the counts to be - Use c2cdf function on the calculator to find
p-values
8Hypotheses written in words
- H0 proportions are equal
- Ha at least one proportion is not the same
- Be sure to write in context!
9Does your zodiac sign determine how successful
you will be? Fortune magazine collected the
zodiac signs of 256 heads of the largest 400
companies. Is there sufficient evidence to claim
that successful people are more likely to be born
under some signs than others? Aries
23 Libra 18 Leo 20 Taurus 20 Scorpio 21 Virgo
19 Gemini 18 Sagittarius 19 Aquarius 24 Cancer 2
3 Capricorn 22 Pisces 29 How many would you
expect in each sign if there were no difference
between them? How many degrees of freedom?
I would expect CEOs to be equally born under all
signs. So 256/12 21.333333
Since there are 12 signs df 12 1 11
10 11A company says its premium mixture of nuts
contains 10 Brazil nuts, 20 cashews, 20
almonds, 10 hazelnuts and 40 peanuts. You buy
a large can and separate the nuts. Upon weighing
them, you find there are 112 g Brazil nuts, 183 g
of cashews, 207 g of almonds, 71 g or hazelnuts,
and 446 g of peanuts. You wonder whether your
mix is significantly different from what the
company advertises? Why is the chi-square
goodness-of-fit test NOT appropriate here? What
might you do instead of weighing the nuts in
order to use chi-square?
Because we do NOT have counts of the type of nuts.
We could count the number of each type of nut and
then perform a c2 test.
12Offspring of certain fruit flies may have yellow
or ebony bodies and normal wings or short wings.
Genetic theory predicts that these traits will
appear in the ratio 9331 (yellow normal,
yellow short, ebony normal, ebony short) A
researcher checks 100 such flies and finds the
distribution of traits to be 59, 20, 11, and 10,
respectively. What are the expected counts?
df? Are the results consistent with the
theoretical distribution predicted by the genetic
model? (see next page)
Since there are 4 categories, df 4 1 3
Expected counts Y N 56.25 Y S 18.75 E
N 18.75 E S 6.25
We expect 9/16 of the 100 flies to have yellow
and normal wings. (Y N)
13- Assumptions
- Have a random sample of fruit flies
- All expected counts are greater than 5.
- Expected counts
- Y N 56.25, Y S 18.75, E N 18.75, E
S 6.25 - H0 The proportions of fruit flies are the same
as the theoretical model. - Ha At least one of the proportions of fruit
flies is not the same as the theoretical model. - P-value c2cdf(5.671, 1099, 3) .129 a .05
- Since p-value gt a, I fail to reject H0. There is
not sufficient evidence to suggest that the
distribution of fruit flies is not the same as
the theoretical model.
14c2 test for independence
- Used with categorical, bivariate data from ONE
sample - Used to see if the two categorical variables are
associated (dependent) or not associated
(independent)
15Assumptions formula remain the same!
16Hypotheses written in words
- H0 two variables are independent
- Ha two variables are dependent
- Be sure to write in context!
17A beef distributor wishes to determine whether
there is a relationship between geographic region
and cut of meat preferred. If there is no
relationship, we will say that beef preference is
independent of geographic region. Suppose that,
in a random sample of 500 customers, 300 are from
the North and 200 from the South. Also, 150
prefer cut A, 275 prefer cut B, and 75 prefer cut
C.
18If beef preference is independent of geographic
region, how would we expect this table to be
filled in?
North South Total
Cut A 150
Cut B 275
Cut C 75
Total 300 200 500
90
60
165
110
45
30
19Expected Counts
20Degrees of freedom
Or cover up one row one column count the
number of cells remaining!
21Suppose that in the actual sample of 500
consumers the observed numbers were as
follows Is there sufficient evidence to
suggest that geographic regions and beef
preference are not independent? (Is there a
difference between the expected and observed
counts?)
North South Total
Cut A 100 50 150
Cut B 150 125 275
Cut C 50 25 75
Total 300 200 500
22- Assumptions
- Have a random sample of people
- All expected counts are greater than 5.
- H0 geographic region and beef preference are
independent Ha geographic region and beef
preference are dependent - P-value .0226 df 2 a .05
- Since p-value lt a, I reject H0. There is
sufficient evidence to suggest that geographic
region and beef preference are dependent.
Expected Counts N S A 90
60 B 165 110 C 45 30
23c2 test for homogeneity
- Used with a single categorical variable from two
(or more) independent samples - Used to see if the two populations are the same
(homogeneous)
24Assumptions formula remain the same! Expected
counts df are found the same way as test for
independence. Only change is the hypotheses!
25Hypotheses written in words
- H0 the proportions for the two (or more)
distributions are the same - Ha At least one of the proportions for the
distributions is different - Be sure to write in context!
26The following data is on drinking behavior for
independently chosen random samples of male and
female students. Does there appear to be a
gender difference with respect to drinking
behavior? (Note low 1-7 drinks/wk, moderate
8-24 drinks/wk, high 25 or more drinks/wk)
Men Women Total
None 140 186 326
Low 478 661 1139
Moderate 300 173 473
High 63 16 79
Total 981 1036 2017
27Expected Counts M
F 0 163 163 L 569.5 569.5 M 236.5 236.5 H 39.5 39.
5
- Assumptions
- Have 2 random sample of students
- All expected counts are greater than 5.
- H0 the proportions of drinking behaviors is the
same for female male students
Ha at least one of the proportions of drinking
behavior is different for female male students - P-value .000 df 3 a .05
- Since p-value lt a, I reject H0. There is
sufficient evidence to suggest that drinking
behavior is not the same for female male
students.