Based on Chapter 7 of ModernDive. Code for Quiz 11.
Replace all the instances of ‘SEE QUIZ’. These are inputs from your moodle quiz.
Replace all the instances of ‘???’. These are answers on your moodle quiz.
Run all the individual code chunks to make sure the answers in this file correspond with your quiz answers
After you check all your code chunks run then you can knit it. It won’t knit until the ??? are replaced
The quiz assumes that you have watched the videos and worked through the examples in Chapter 7 of ModernDive
Make sure you have installed and loaded the tidyverse
and the moderndive
packages
Fill in the blanks
Put the command you use in the Rchunks in your Rmd file for this quiz.
Modify the code for comparing different sample sizes from the virtual bowl
Segment 1: sample size = SEE QUIZ
bowl
dataset. Assign the output to virtual_samples_30virtual_samples_30 <- bowl %>%
rep_sample_n(size = 30, reps = 1120)
start with virtual_samples_30
THEN
group_by
replicate THEN
create variable red equal to the sum of all the red balls
create variable prop_red
equal to variable red / 30
Assign the output to virtual_prop_red_30
virtual_prop_red_30
via a histogram use labs tolabel x-axis = “Proportion of 30 balls that were red”
create title = “30”
ggplot(virtual_prop_red_30, aes(x = prop_red)) +
geom_histogram(binwidth = 0.05, boundary = 0.4, color = "white") +
labs(x = "Proportion of 30 balls that were red", title = "30")
Segment 2: sample size = 55
virtual_samples_55
virtual_samples_55 <- bowl %>%
rep_sample_n(size = 55, reps = 1120)
start with virtual_samples_55
THEN
group_by
replicate THEN
create variable red equal to the sum of all the red balls
create variable prop_red
equal to variable red / 55
Assign the output to virtual_prop_red_55
virtual_prop_red_55
via a histogram use labs tolabel x-axis = “Proportion of 55 balls that were red”
create title = “55”
ggplot(virtual_prop_red_55, aes(x = prop_red)) +
geom_histogram(binwidth = 0.05, boundary = 0.4, color = "white") +
labs(x = "Proportion of 55 balls that were red", title = "55")
Segment 3: sample size = 114
virtual_samples_114
virtual_samples_114 <- bowl %>%
rep_sample_n(size = 114, reps = 1120)
start with virtual_samples_114
THEN
group_by
replicate THEN
create variable red equal to the sum of all the red balls
create variable prop_red equal to variable red / 114
Assign the output to virtual_prop_red_114
virtual_prop_red_114
via a histogram use labs tolabel x axis = “Proportion of 114 balls that were red”
create title = “114”
ggplot(virtual_prop_red_114, aes(x = prop_red)) +
geom_histogram(binwidth = 0.05, boundary = 0.4, color = "white") +
labs(x = "Proportion of 114 balls that were red", title = "114")
Calculate the standard deviations for your three sets of 1120 values of prop_red
using the standard deviation
n = 30
n = 55
n = 114
The distribution with sample size, n = 114, has the smallest standard deviation (spread) around the estimated proportion of red balls.