In this lab, we will explore and visualize the data using the tidyverse suite of packages, and perform statistical inference using infer. The data can be found in the companion package for OpenIntro resources, openintro.
Let’s load the packages.
library(tidyverse)
library(openintro)
library(infer)You will be analyzing the same dataset as in the previous lab, where
you delved into a sample from the Youth Risk Behavior Surveillance
System (YRBSS) survey, which uses data from high schoolers to help
discover health patterns. The dataset is called yrbss.
What are the counts within each category for the amount of days these students have texted while driving within the past 30 days?
Q1:4792 did not texting while driving. 1-2 days have 925 were reported, 3-5 days have 493 were reported, 6-9 days have 311 were reported, 10-19 days have 373 were reported, 20-29 days have 298 were reported.
data("yrbss", package = 'openintro')
names(yrbss)## [1] "age" "gender"
## [3] "grade" "hispanic"
## [5] "race" "height"
## [7] "weight" "helmet_12m"
## [9] "text_while_driving_30d" "physically_active_7d"
## [11] "hours_tv_per_school_day" "strength_training_7d"
## [13] "school_night_hours_sleep"
table(yrbss$text_while_driving_30d)##
## 0 1-2 10-19 20-29 3-5
## 4792 925 373 298 493
## 30 6-9 did not drive
## 827 311 4646What is the proportion of people who have texted while driving every day in the past 30 days and never wear helmets?
Q2: 463 people reported texting while driving but without helmets.
Remember that you can use filter to limit the dataset to
just non-helmet wearers. Here, we will name the dataset
no_helmet.
data('yrbss', package='openintro')
no_helmet <- yrbss %>%
filter(helmet_12m == "never")Also, it may be easier to calculate the proportion if you create a
new variable that specifies whether the individual has texted every day
while driving over the past 30 days or not. We will call this variable
text_ind.
no_helmet <- no_helmet %>%
mutate(text_ind = replace_na(ifelse(text_while_driving_30d == "30", "yes", "no"), "unknown"))no_helmet %>%
count(text_ind)## # A tibble: 3 × 2
## text_ind n
## <chr> <int>
## 1 no 6040
## 2 unknown 474
## 3 yes 463
When summarizing the YRBSS, the Centers for Disease Control and Prevention seeks insight into the population parameters. To do this, you can answer the question, “What proportion of people in your sample reported that they have texted while driving each day for the past 30 days?” with a statistic; while the question “What proportion of people on earth have texted while driving each day for the past 30 days?” is answered with an estimate of the parameter.
The inferential tools for estimating population proportion are analogous to those used for means in the last chapter: the confidence interval and the hypothesis test.
set.seed(4567)
no_helmet %>%filter(text_ind != "unknown") |>
specify(response = text_ind, success = "yes") %>%
generate(reps = 1000, type = "bootstrap") %>%
calculate(stat = "prop") %>%
get_ci(level = 0.95)## # A tibble: 1 × 2
## lower_ci upper_ci
## <dbl> <dbl>
## 1 0.0646 0.0777
Note that since the goal is to construct an interval estimate for a
proportion, it’s necessary to both include the success
argument within specify, which accounts for the proportion
of non-helmet wearers than have consistently texted while driving the
past 30 days, in this example, and that stat within
calculate is here “prop”, signaling that you are trying to
do some sort of inference on a proportion.
What is the margin of error for the estimate of the proportion of non-helmet wearers that have texted while driving each day for the past 30 days based on this survey?
Q3: ME=0.004
n=nrow(no_helmet)
p <- seq(from = 0, to = 0.04, by = 0.01)
me <- 2 * sqrt(p * (1 - p)/n)
me## [1] 0.000000000 0.002382392 0.003352152 0.004084530 0.004692035Using the infer package, calculate confidence
intervals for two other categorical variables (you’ll need to decide
which level to call “success”, and report the associated margins of
error. Interpet the interval in context of the data. It may be helpful
to create new data sets for each of the two countries first, and then
use these data sets to construct the confidence intervals.
Q4: training_7d that people have every day strength training CI within 0.2647 ~ 0.2795 with ME 0.003. active_7d that people have every day sphysically acitive CI within 0.1610 ~ 0.1740 with ME 0.003.
active_7d <-yrbss%>%
mutate(full_act = replace_na(ifelse(physically_active_7d == "7","yes","no" ), "unknown"))
set.seed(4567)
active_7d %>%filter(full_act != "unknown") |>
specify(response = full_act, success = "yes") %>%
generate(reps = 1000, type = "bootstrap") %>%
calculate(stat = "prop") %>%
get_ci(level = 0.95) ## # A tibble: 1 × 2
## lower_ci upper_ci
## <dbl> <dbl>
## 1 0.265 0.280
n=nrow(active_7d)
p <- seq(from = 0, to = 0.04, by = 0.01)
me2 <- 2 * sqrt(p * (1 - p)/n)
me2## [1] 0.000000000 0.001707457 0.002402482 0.002927377 0.003362775
training_7d <-yrbss%>%
mutate(full_strength = replace_na(ifelse(strength_training_7d == "7","yes","no" ), "unknown"))
set.seed(4567)
training_7d %>%filter(full_strength != "unknown") |>
specify(response = full_strength, success = "yes") %>%
generate(reps = 1000, type = "bootstrap") %>%
calculate(stat = "prop") %>%
get_ci(level = 0.95) ## # A tibble: 1 × 2
## lower_ci upper_ci
## <dbl> <dbl>
## 1 0.162 0.175
n=nrow(training_7d)
p <- seq(from = 0, to = 0.04, by = 0.01)
me3 <- 2 * sqrt(p * (1 - p)/n)
me3## [1] 0.000000000 0.001707457 0.002402482 0.002927377 0.003362775Imagine you’ve set out to survey 1000 people on two questions: are you at least 6-feet tall? and are you left-handed? Since both of these sample proportions were calculated from the same sample size, they should have the same margin of error, right? Wrong! While the margin of error does change with sample size, it is also affected by the proportion.
Think back to the formula for the standard error: \(SE = \sqrt{p(1-p)/n}\). This is then used in the formula for the margin of error for a 95% confidence interval:
\[ ME = 1.96\times SE = 1.96\times\sqrt{p(1-p)/n} \,. \] Since the population proportion \(p\) is in this \(ME\) formula, it should make sense that the margin of error is in some way dependent on the population proportion. We can visualize this relationship by creating a plot of \(ME\) vs. \(p\).
Since sample size is irrelevant to this discussion, let’s just set it to some value (\(n = 1000\)) and use this value in the following calculations:
n <- 1000The first step is to make a variable p that is a
sequence from 0 to 1 with each number incremented by 0.01. You can then
create a variable of the margin of error (me) associated
with each of these values of p using the familiar
approximate formula (\(ME = 2 \times
SE\)).
p <- seq(from = 0, to = 1, by = 0.01)
me <- 2 * sqrt(p * (1 - p)/n)Lastly, you can plot the two variables against each other to reveal
their relationship. To do so, we need to first put these variables in a
data frame that you can call in the ggplot function.
dd <- data.frame(p = p, me = me)
ggplot(data = dd, aes(x = p, y = me)) +
geom_line() +
labs(x = "Population Proportion", y = "Margin of Error")Describe the relationship between p and
me. Include the margin of error vs. population proportion
plot you constructed in your answer. For a given sample size, for which
value of p is margin of error maximized?
Q5:margin of error maximized when the proportion is 50%. the relationship between p and me is me increse as p increase until me reach max then me decrease as p increase.
We have emphasized that you must always check conditions before making inference. For inference on proportions, the sample proportion can be assumed to be nearly normal if it is based upon a random sample of independent observations and if both \(np \geq 10\) and \(n(1 - p) \geq 10\). This rule of thumb is easy enough to follow, but it makes you wonder: what’s so special about the number 10?
The short answer is: nothing. You could argue that you would be fine with 9 or that you really should be using 11. What is the “best” value for such a rule of thumb is, at least to some degree, arbitrary. However, when \(np\) and \(n(1-p)\) reaches 10 the sampling distribution is sufficiently normal to use confidence intervals and hypothesis tests that are based on that approximation.
You can investigate the interplay between \(n\) and \(p\) and the shape of the sampling distribution by using simulations. Play around with the following app to investigate how the shape, center, and spread of the distribution of \(\hat{p}\) changes as \(n\) and \(p\) changes.
Describe the sampling distribution of sample proportions at \(n = 300\) and \(p = 0.1\). Be sure to note the center, spread, and shape.
Q6:the center is 0.1. Shape is similar to normal.
Keep \(n\) constant and change \(p\). How does the shape, center, and spread of the sampling distribution vary as \(p\) changes. You might want to adjust min and max for the \(x\)-axis for a better view of the distribution.
Q7: Changing p will keep shape same but spread will shift to right as p increasing.
Now also change \(n\). How does \(n\) appear to affect the distribution of \(\hat{p}\)?
Q8: increasing n will increase density of shape which is higher and tighter. decreasing n will wider the spread and lower.
For some of the exercises below, you will conduct inference comparing
two proportions. In such cases, you have a response variable that is
categorical, and an explanatory variable that is also categorical, and
you are comparing the proportions of success of the response variable
across the levels of the explanatory variable. This means that when
using infer, you need to include both variables within
specify.
Is there convincing evidence that those who sleep 10+ hours per day are more likely to strength train every day of the week? As always, write out the hypotheses for any tests you conduct and outline the status of the conditions for inference. If you find a significant difference, also quantify this difference with a confidence interval.
Q9: Ho: student getting 10 hours more sleep did not getting strength training every day. Ha: student getting every day strength training also get 10+ hours sleeping.
set.seed(4567)
good_sleep <- yrbss %>%
filter(school_night_hours_sleep == "10+")
good_sleep <- good_sleep %>%
mutate(strength = replace_na(ifelse(strength_training_7d == "7","yes","no" ), "unknown"))
good_sleep %>%filter(strength != "unknown") |>
specify(response = strength, success = "yes") %>%
generate(reps = 1000, type = "bootstrap") %>%
calculate(stat = "prop") %>%
get_ci(level = 0.95)## # A tibble: 1 × 2
## lower_ci upper_ci
## <dbl> <dbl>
## 1 0.221 0.321Let’s say there has been no difference in likeliness to strength train every day of the week for those who sleep 10+ hours. What is the probablity that you could detect a change (at a significance level of 0.05) simply by chance? Hint: Review the definition of the Type 1 error.
Q10:Type 1 error is rejecting the null hypothesis when it’s actually true. We have 95% confident of the proportion of student get strength training with 10+ sleeping is between 0.221 and 0.3205.
Suppose you’re hired by the local government to estimate the proportion of residents that attend a religious service on a weekly basis. According to the guidelines, the estimate must have a margin of error no greater than 1% with 95% confidence. You have no idea what to expect for \(p\). How many people would you have to sample to ensure that you are within the guidelines?
Q11: As we know when p=0.5 , ME will reach max. so e=1% n= 1.96^2 * 0.5 * (1 - 0.5) / 0.01^2 n will around 9604. Therefore sample size will be 9604.
Hint: Refer to your plot of the relationship between \(p\) and margin of error. This question does not require using a dataset.