In this lab, you’ll investigate the probability distribution that is most central to statistics: the normal distribution. If you are confident that your data are nearly normal, that opens the door to many powerful statistical methods. Here we’ll use the graphical tools of R to assess the normality of our data and also learn how to generate random numbers from a normal distribution.
In this lab, we will explore and visualize the data using the tidyverse suite of packages as well as the openintro package.
Let’s load the packages.
library(tidyverse)
library(openintro)This week you’ll be working with fast food data. This data set contains data on 515 menu items from some of the most popular fast food restaurants worldwide. Let’s take a quick peek at the first few rows of the data.
Either you can use glimpse like before, or
head to do this.
library(tidyverse)
library(openintro)
data("fastfood", package='openintro')
head(fastfood)## # A tibble: 6 × 17
## restaurant item calories cal_fat total_fat sat_fat trans_fat cholesterol
## <chr> <chr> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 Mcdonalds Artisan G… 380 60 7 2 0 95
## 2 Mcdonalds Single Ba… 840 410 45 17 1.5 130
## 3 Mcdonalds Double Ba… 1130 600 67 27 3 220
## 4 Mcdonalds Grilled B… 750 280 31 10 0.5 155
## 5 Mcdonalds Crispy Ba… 920 410 45 12 0.5 120
## 6 Mcdonalds Big Mac 540 250 28 10 1 80
## # ℹ 9 more variables: sodium <dbl>, total_carb <dbl>, fiber <dbl>, sugar <dbl>,
## # protein <dbl>, vit_a <dbl>, vit_c <dbl>, calcium <dbl>, salad <chr>
You’ll see that for every observation there are 17 measurements, many of which are nutritional facts.
You’ll be focusing on just three columns to get started: restaurant, calories, calories from fat.
Let’s first focus on just products from McDonalds and Dairy Queen.
mcdonalds<- fastfood %>%
filter(restaurant == "Mcdonalds")
dairy_queen <- fastfood %>%
filter(restaurant == "Dairy Queen")Insert your answer here In both histograms, most observations are found in the center/middle and then spread decreasingly and symmetrically from that center or middle point, forming what looks like a bell curve.
ggplot(data = mcdonalds, aes(x = cal_fat)) +
geom_histogram() +
labs(title = "Histogram of the distributions of the amount of calories from fat of the options from mcdonalds")## `stat_bin()` using `bins = 30`. Pick better value with `binwidth`.
ggplot(data = dairy_queen, aes(x = cal_fat)) +
geom_histogram() +
labs(title = "Histogram of the distributions of the amount of calories from fat of the options from dairy_queen")## `stat_bin()` using `bins = 30`. Pick better value with `binwidth`.
In your description of the distributions, did you use words like bell-shapedor normal? It’s tempting to say so when faced with a unimodal symmetric distribution.
To see how accurate that description is, you can plot a normal distribution curve on top of a histogram to see how closely the data follow a normal distribution. This normal curve should have the same mean and standard deviation as the data. You’ll be focusing on calories from fat from Dairy Queen products, so let’s store them as a separate object and then calculate some statistics that will be referenced later.
dqmean <- mean(dairy_queen$cal_fat)
dqsd <- sd(dairy_queen$cal_fat)Next, you make a density histogram to use as the backdrop and use the
lines function to overlay a normal probability curve. The
difference between a frequency histogram and a density histogram is that
while in a frequency histogram the heights of the bars add up
to the total number of observations, in a density histogram the
areas of the bars add up to 1. The area of each bar can be
calculated as simply the height times the width of the bar.
Using a density histogram allows us to properly overlay a normal
distribution curve over the histogram since the curve is a normal
probability density function that also has area under the curve of 1.
Frequency and density histograms both display the same exact shape; they
only differ in their y-axis. You can verify this by comparing the
frequency histogram you constructed earlier and the density histogram
created by the commands below.
ggplot(data = dairy_queen, aes(x = cal_fat)) +
geom_blank() +
geom_histogram(aes(y = ..density..)) +
stat_function(fun = dnorm, args = c(mean = dqmean, sd = dqsd), col = "tomato")## Warning: The dot-dot notation (`..density..`) was deprecated in ggplot2 3.4.0.
## ℹ Please use `after_stat(density)` instead.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## `stat_bin()` using `bins = 30`. Pick better value with `binwidth`.
After initializing a blank plot with geom_blank(), the
ggplot2 package (within the tidyverse) allows
us to add additional layers. The first layer is a density histogram. The
second layer is a statistical function – the density of the normal
curve, dnorm. We specify that we want the curve to have the
same mean and standard deviation as the column of fat calories. The
argument col simply sets the color for the line to be
drawn. If we left it out, the line would be drawn in black.
Yes, based on the above plot, the data appear to follow a nearly normal distribution as most of the observations (approximately 68 per cent of them)fall within 1 standard deviation above and below the mean.**
Eyeballing the shape of the histogram is one way to determine if the data appear to be nearly normally distributed, but it can be frustrating to decide just how close the histogram is to the curve. An alternative approach involves constructing a normal probability plot, also called a normal Q-Q plot for “quantile-quantile”.
ggplot(data = dairy_queen, aes(sample = cal_fat)) +
geom_line(stat = "qq") +
labs(title = "Probability plot for the real data")This time, you can use the geom_line() layer, while
specifying that you will be creating a Q-Q plot with the
stat argument. It’s important to note that here, instead of
using x instead aes(), you need to use
sample.
The x-axis values correspond to the quantiles of a theoretically normal curve with mean 0 and standard deviation 1 (i.e., the standard normal distribution). The y-axis values correspond to the quantiles of the original unstandardized sample data. However, even if we were to standardize the sample data values, the Q-Q plot would look identical. A data set that is nearly normal will result in a probability plot where the points closely follow a diagonal line. Any deviations from normality leads to deviations of these points from that line.
The plot for Dairy Queen’s calories from fat shows points that tend to follow the line but with some errant points towards the upper tail. You’re left with the same problem that we encountered with the histogram above: how close is close enough?
A useful way to address this question is to rephrase it as: what do
probability plots look like for data that I know came from a
normal distribution? We can answer this by simulating data from a normal
distribution using rnorm.
sim_norm <- rnorm(n = nrow(dairy_queen), mean = dqmean, sd = dqsd)The first argument indicates how many numbers you’d like to generate,
which we specify to be the same number of menu items in the
dairy_queen data set using the nrow()
function. The last two arguments determine the mean and standard
deviation of the normal distribution from which the simulated sample
will be generated. You can take a look at the shape of our simulated
data set, sim_norm, as well as its normal probability
plot.
sim_norm. Do all of
the points fall on the line? How does this plot compare to the
probability plot for the real data? (Since sim_norm is not
a data frame, it can be put directly into the sample
argument and the data argument can be dropped.)Insert your answer here Compared to the probability
plot for the real data, a normal probability plot of
sim_norm (see below) appears to have an almost flawless
exponential linearity.The probability plot for the real data however
presents (despite its overall linearity) areas where some observations
fall far away from the line.
ggplot(data = NULL, aes(sample = sim_norm)) +
geom_line(stat = "qq") +
labs(title = "Normal probability plot of `sim_norm`")Even better than comparing the original plot to a single plot generated from a normal distribution is to compare it to many more plots using the following function. It shows the Q-Q plot corresponding to the original data in the top left corner, and the Q-Q plots of 8 different simulated normal data. It may be helpful to click the zoom button in the plot window.
qqnormsim(sample = cal_fat, data = dairy_queen) +
labs(title = "Normal probability plot simulation - Dairy Queen")** Yes, the normal probability plot for the calories from fat look similar to the plots created for the simulated data, and especially sim 7 It is also a normal distribution in accordance to the section of the course on Normal Q-Q Plot that states that the existence of a linear relationship in the plot is an indicator of a near normal distribution.**
Insert your answer here
qqnormsim(sample = cal_fat, data = mcdonalds) +
labs(title = "Normal probability plot simulation - McDonalds")In this scenario, the normal probability plot for the calories from fat does not look similar to the plots created for the simulated data. Nonetheless, all the 7 simulation plots provide evidence that the calories from mcdonals are nearly normal, as there is a linear relationship in each of the 7 simulation plots in the shape of a diagonal line.
Okay, so now you have a slew of tools to judge whether or not a variable is normally distributed. Why should you care?
It turns out that statisticians know a lot about the normal distribution. Once you decide that a random variable is approximately normal, you can answer all sorts of questions about that variable related to probability. Take, for example, the question of, “What is the probability that a randomly chosen Dairy Queen product has more than 600 calories from fat?”
If we assume that the calories from fat from Dairy Queen’s menu are
normally distributed (a very close approximation is also okay), we can
find this probability by calculating a Z score and consulting a Z table
(also called a normal probability table). In R, this is done in one step
with the function pnorm().
1 - pnorm(q = 600, mean = dqmean, sd = dqsd)## [1] 0.01501523
Note that the function pnorm() gives the area under the
normal curve below a given value, q, with a given mean and
standard deviation. Since we’re interested in the probability that a
Dairy Queen item has more than 600 calories from fat, we have to take
one minus that probability.
Assuming a normal distribution has allowed us to calculate a theoretical probability. If we want to calculate the probability empirically, we simply need to determine how many observations fall above 600 then divide this number by the total sample size.
dairy_queen %>%
filter(cal_fat > 600) %>%
summarise(percent = n() / nrow(dairy_queen))## # A tibble: 1 × 1
## percent
## <dbl>
## 1 0.0476
Although the probabilities are not exactly the same, they are reasonably close. The closer that your distribution is to being normal, the more accurate the theoretical probabilities will be.
Insert your answer here 1. What is the probability that a cheeseburger from Mcdonalds has less than 300 calories from fat?”
Theoretical probability:
# Theoretical Probability
mcdonalds|>
filter(item == "Cheeseburger")## # A tibble: 1 × 17
## restaurant item calories cal_fat total_fat sat_fat trans_fat cholesterol
## <chr> <chr> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 Mcdonalds Cheesebur… 300 100 12 5 0.5 40
## # ℹ 9 more variables: sodium <dbl>, total_carb <dbl>, fiber <dbl>, sugar <dbl>,
## # protein <dbl>, vit_a <dbl>, vit_c <dbl>, calcium <dbl>, salad <chr>
c_mean <- mean(mcdonalds$cal_fat)
c_sd <- sd(mcdonalds$cal_fat)
1 - pnorm(q = 300, mean = c_mean, sd = c_sd)## [1] 0.4740374
Empirical probaility:
# Empirical distribution
mcdonalds|>
filter(cal_fat < 300) |>
summarise(percent = n()/nrow(mcdonalds))## # A tibble: 1 × 1
## percent
## <dbl>
## 1 0.632
Theoretical probability:
# Theoretical Probability
mc_mean <- mean(mcdonalds$sodium)
mc_sd <- sd(mcdonalds$sodium)
1 - pnorm(q = 1000 , mean = mc_mean, sd = mc_sd)## [1] 0.6637094
Empirical probability
# Empirical distribution
mcdonalds|>
filter(sodium >1000) |>
summarise(percent = n()/nrow(mcdonalds))## # A tibble: 1 × 1
## percent
## <dbl>
## 1 0.649
Insert your answer here Based on the plots below, Burger King,Taco Bell and Arbys’ distributions show observations that form a near perfect diagonal line. One can then conclude that these three distributions are the closest to normal distribution for sodium.
ARBYS Sodium Plot
arbys<- fastfood|>
filter(restaurant == "Arbys")
qqnorm(arbys$sodium, main = "Arbys")labs(title = "Theoretical sodium distribution at Arbys")## $title
## [1] "Theoretical sodium distribution at Arbys"
##
## attr(,"class")
## [1] "labels"
BURGER KING Sodium Plot
burger_king <- fastfood |>
filter(restaurant == "Burger King")
qqnorm(burger_king$sodium, main = "Burger King")CHICK FIL A Sodium Plot
chick_fil_a <- fastfood|>
filter(restaurant == "Chick Fil-A")
qqnorm(chick_fil_a $sodium, main = "Chick Fil-A")DAIRY QUEEN Sodium Plot
day_q <- fastfood|>
filter(restaurant == "Dairy Queen")
qqnorm(day_q$sodium, main = "Dairy Queen")MCDONALDS Sodium Plot
mc_d<- fastfood|>
filter(restaurant == "Mcdonalds")
qqnorm(mc_d$sodium, main = "Mcdonalds")SONIC Sodium Plot
sonic <- fastfood|>
filter(restaurant == "Sonic")
qqnorm(sonic$sodium, main = "Sonic")SUBWAY Sodium Plot
sbw <- fastfood|>
filter(restaurant == "Subway")
qqnorm(sbw$sodium, main = "Subway")TACO BELL Sodium Plot
taco_b <- fastfood|>
filter(restaurant == "Taco Bell")
qqnorm(taco_b$sodium, main = "Taco Bell")The stepwise pattern in some of the distributions may be resulting from the fact fast food chains often offer a large array of products, containing various levels of sodium.
Insert your answer here
Based on the normal probability plot below, the variable total_carb is right skewed and the histogram confirms this with data being concentrated on the left with a tail running intermittently to the right.
mc_d<- fastfood|>
filter(restaurant == "Mcdonalds")
qqnorm(mc_d$total_carb, main = "Mcdonalds")ggplot(data = mc_d, aes(x = total_carb)) +
geom_histogram()## `stat_bin()` using `bins = 30`. Pick better value with `binwidth`.