Do the Shiny app for the two-way table on sex and love_first.
How many times did you re-sample?
50043
What percentage of the time did the re sampled chi-square statistic exceed the chi-square statistic in the actual study?
13.55%
Do you think there is overwhelming evidence that in the GC population the two sexes differ in whether they believe in love at first sight?
No. There is actually very little evidence.
Here’s the code for a chi-square test to see if sex and belief in love at first sight are related in the GC population. Run the code:
chisqtestGC(~sex+love_first,data=m111survey,
graph=TRUE)
## Pearson's Chi-squared test with Yates' continuity correction
##
## Observed Counts:
## love_first
## sex no yes
## female 22 18
## male 23 8
##
## Counts Expected by Null:
## love_first
## sex no yes
## female 25.35 14.65
## male 19.65 11.35
##
## Contributions to the chi-square statistic:
## love_first
## sex no yes
## female 0.44 0.77
## male 0.57 0.99
##
##
## Chi-Square Statistic = 2.0068
## Degrees of Freedom of the table = 1
## P-Value = 0.1566
Now look at the output and answer these question:
What’s the test statistic?
2.0068
About how big should it be if the Null is correct?
1
What’s the P-value?
0.1566
Are race and gun owndership related in the U.S. population? In the code chunk below, insert the code needed to use chisqtestGC() to investigate this question. Tip: copy-paste and then modify the code from the previous problem.
chisqtestGC(~race+owngun,data=gss02,graph=TRUE)
## Pearson's Chi-squared test
##
## Observed Counts:
## owngun
## race No Yes
## AfrAm 106 16
## Hispanic 20 3
## Other 25 7
## White 454 284
##
## Counts Expected by Null:
## owngun
## race No Yes
## AfrAm 80.67 41.33
## Hispanic 15.21 7.79
## Other 21.16 10.84
## White 487.97 250.03
##
## Contributions to the chi-square statistic:
## owngun
## race No Yes
## AfrAm 7.96 15.53
## Hispanic 1.51 2.95
## Other 0.70 1.36
## White 2.36 4.61
##
##
## Chi-Square Statistic = 36.9779
## Degrees of Freedom of the table = 3
## P-Value = 0
Looking at the output, answer the following questions.
What’s the test statistic?
36.9779
About how big should it be if the Null is correct?
3
What’s the P-value?
0
Do you think we have strong evidence for a relationship in the population, or could the pattern in the data be due just to chance?
Strong evidence.
Do you think we have strong evidence for a relationship in the population, or could the pattern in the data be due just to chance?
Are religion and whether or not a subject believes that marijuana should be legalized, related in the U.S. population?
chisqtestGC(~relig+marijuan,data=gss02,graph=TRUE)
## Pearson's Chi-squared test
##
## Observed Counts:
## marijuan
## relig Legal NotLegal
## Catholic 68 140
## Jewish 10 10
## Other 107 73
## Protestant 118 319
##
## Counts Expected by Null:
## marijuan
## relig Legal NotLegal
## Catholic 74.58 133.42
## Jewish 7.17 12.83
## Other 64.54 115.46
## Protestant 156.70 280.30
##
## Contributions to the chi-square statistic:
## marijuan
## relig Legal NotLegal
## Catholic 0.58 0.32
## Jewish 1.12 0.62
## Other 27.93 15.61
## Protestant 9.56 5.34
##
##
## Chi-Square Statistic = 61.0839
## Degrees of Freedom of the table = 3
## P-Value = 0
Looking at the output, answer the following questions.
What’s the test statistic?
61.0839
About how big should it be if the Null is correct?
3
What’s the P-value?
0
Do you think we have strong evidence for a relationship in the population, or could the pattern in the data be due just to chance?
Strong evidence.
Try simulation on the sex and seating-preference study:
chisqtestGC(~sex+seat,data=m111survey,
simulate.p.value="random",
B=3000)
Now try it again, without simulation:
chisqtestGC(~sex+seat,data=m111survey)
Compare the P-values: are they about the same, or very different?
About the same.