The Human Freedom Index is a report that attempts to summarize the idea of “freedom” through a bunch of different variables for many countries around the globe. It serves as a rough objective measure for the relationships between the different types of freedom - whether it’s political, religious, economical or personal freedom - and other social and economic circumstances. The Human Freedom Index is an annually co-published report by the Cato Institute, the Fraser Institute, and the Liberales Institute at the Friedrich Naumann Foundation for Freedom.
In this lab, you’ll be analyzing data from Human Freedom Index reports from 2008-2016. Your aim will be to summarize a few of the relationships within the data both graphically and numerically in order to find which variables can help tell a story about freedom.
Getting Started
Load packages
In this lab, you will explore and visualize the data using the tidyverse suite of packages. The data can be found in the companion package for OpenIntro resources, openintro.
Let’s load the packages.
library(tidyverse)
library(openintro)
data('hfi', package='openintro')The data
The data we’re working with is in the openintro package and it’s called hfi, short for Human Freedom Index.
dim(hfi)## [1] 1458 123
The dimensions of the dataset is 1458 by 123. That is, there are 1458 observations(rows) and 123 variables(columns).
pf_score, and one of the other numerical variables? Plot this relationship using the variable pf_expression_control as the predictor. Does the relationship look linear? If you knew a country’s pf_expression_control, or its score out of 10, with 0 being the most, of political pressures and controls on media content, would you be comfortable using a linear model to predict the personal freedom score?I will use a scatter plot to display the relationship between personal freedom score pf_score and another numerical variable.
ggplot(data = hfi, aes(x = pf_expression_control, y = pf_score)) +
geom_point() + xlab("Expression Control") + ylab("Freedom Score") +
labs(title = "Scatterplot of Freedom Score vs Expression Control")Yes I would be comfortable using a linear model to predict the personal freedom score. The plot shows a linear trend, and other conditions for linear regression appears to be satisfied.
If the relationship looks linear, we can quantify the strength of the relationship with the correlation coefficient.
hfi %>%
summarise(cor(pf_expression_control, pf_score, use = "complete.obs"))## # A tibble: 1 x 1
## `cor(pf_expression_control, pf_score, use = "complete.obs")`
## <dbl>
## 1 0.796
Here, we set the use argument to “complete.obs” since there are some observations of NA.
Sum of squared residuals
In this section, you will use an interactive function to investigate what we mean by “sum of squared residuals”. You will need to run this function in your console, not in your markdown document. Running the function also requires that the hfi dataset is loaded in your environment.
Think back to the way that we described the distribution of a single variable. Recall that we discussed characteristics such as center, spread, and shape. It’s also useful to be able to describe the relationship of two numerical variables, such as pf_expression_control and pf_score above.
There is a strong positive linear relationship between the freedom score (pf_score) and expression control (pf_expression_control). Also, there appears to be some outliers in the plot.
Just as you’ve used the mean and standard deviation to summarize a single variable, you can summarize the relationship between these two variables by finding the line that best follows their association. Use the following interactive function to select the line that you think does the best job of going through the cloud of points.
# This will only work interactively (i.e. will not show in the knitted document)
hfi <- hfi %>% filter(complete.cases(pf_expression_control, pf_score))
DATA606::plot_ss(x = hfi$pf_expression_control, y = hfi$pf_score)After running this command, you’ll be prompted to click two points on the plot to define a line. Once you’ve done that, the line you specified will be shown in black and the residuals in blue. Note that there are 30 residuals, one for each of the 30 observations. Recall that the residuals are the difference between the observed values and the values predicted by the line:
\[ e_i = y_i - \hat{y}_i \]
The most common way to do linear regression is to select the line that minimizes the sum of squared residuals. To visualize the squared residuals, you can rerun the plot command and add the argument showSquares = TRUE.
DATA606::plot_ss(x = hfi$pf_expression_control, y = hfi$pf_score, showSquares = TRUE)Note that the output from the plot_ss function provides you with the slope and intercept of your line as well as the sum of squares.
plot_ss, choose a line that does a good job of minimizing the sum of squares. Run the function several times. What was the smallest sum of squares that you got? How does it compare to your neighbors?The smallest sum of squares is 1513.945
The linear model
It is rather cumbersome to try to get the correct least squares line, i.e. the line that minimizes the sum of squared residuals, through trial and error. Instead, you can use the lm function in R to fit the linear model (a.k.a. regression line).
m1 <- lm(pf_score ~ pf_expression_control, data = hfi)The first argument in the function lm is a formula that takes the form y ~ x. Here it can be read that we want to make a linear model of pf_score as a function of pf_expression_control. The second argument specifies that R should look in the hfi data frame to find the two variables.
The output of lm is an object that contains all of the information we need about the linear model that was just fit. We can access this information using the summary function.
summary(m1)##
## Call:
## lm(formula = pf_score ~ pf_expression_control, data = hfi)
##
## Residuals:
## Min 1Q Median 3Q Max
## -3.8467 -0.5704 0.1452 0.6066 3.2060
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) 4.61707 0.05745 80.36 <2e-16 ***
## pf_expression_control 0.49143 0.01006 48.85 <2e-16 ***
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
##
## Residual standard error: 0.8318 on 1376 degrees of freedom
## (80 observations deleted due to missingness)
## Multiple R-squared: 0.6342, Adjusted R-squared: 0.634
## F-statistic: 2386 on 1 and 1376 DF, p-value: < 2.2e-16
Let’s consider this output piece by piece. First, the formula used to describe the model is shown at the top. After the formula you find the five-number summary of the residuals. The “Coefficients” table shown next is key; its first column displays the linear model’s y-intercept and the coefficient of at_bats. With this table, we can write down the least squares regression line for the linear model:
\[ \hat{y} = 4.61707 + 0.49143 \times pf\_expression\_control \]
One last piece of information we will discuss from the summary output is the Multiple R-squared, or more simply, \(R^2\). The \(R^2\) value represents the proportion of variability in the response variable that is explained by the explanatory variable. For this model, 63.42% of the variability in runs is explained by at-bats.
pf_expression_control to predict hf_score, or the total human freedom score. Using the estimates from the R output, write the equation of the regression line. What does the slope tell us in the context of the relationship between human freedom and the amount of political pressure on media content?lm_hf_score <- lm(hf_score ~ pf_expression_control, data = hfi)
summary(lm_hf_score)##
## Call:
## lm(formula = hf_score ~ pf_expression_control, data = hfi)
##
## Residuals:
## Min 1Q Median 3Q Max
## -2.6198 -0.4908 0.1031 0.4703 2.2933
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) 5.153687 0.046070 111.87 <2e-16 ***
## pf_expression_control 0.349862 0.008067 43.37 <2e-16 ***
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
##
## Residual standard error: 0.667 on 1376 degrees of freedom
## (80 observations deleted due to missingness)
## Multiple R-squared: 0.5775, Adjusted R-squared: 0.5772
## F-statistic: 1881 on 1 and 1376 DF, p-value: < 2.2e-16
slope = 0.349862, intercept = 5.153687; hf_score = 5.153687 + 0.349862pf_expression_control
The slope is the amount by which the human freedom score will increase if the pf_expression_control.*
Prediction and prediction errors
Let’s create a scatterplot with the least squares line for m1 laid on top.
ggplot(data = hfi, aes(x = pf_expression_control, y = pf_score)) +
geom_point() +
stat_smooth(method = "lm", se = FALSE)Here, we are literally adding a layer on top of our plot. geom_smooth creates the line by fitting a linear model. It can also show us the standard error se associated with our line, but we’ll suppress that for now.
This line can be used to predict \(y\) at any value of \(x\). When predictions are made for values of \(x\) that are beyond the range of the observed data, it is referred to as extrapolation and is not usually recommended. However, predictions made within the range of the data are more reliable. They’re also used to compute the residuals.
pf_expression_control? Is this an overestimate or an underestimate, and by how much? In other words, what is the residual for this prediction?lm_pf_score <- lm(pf_score ~ pf_expression_control, data = hfi)
summary(lm_pf_score)##
## Call:
## lm(formula = pf_score ~ pf_expression_control, data = hfi)
##
## Residuals:
## Min 1Q Median 3Q Max
## -3.8467 -0.5704 0.1452 0.6066 3.2060
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) 4.61707 0.05745 80.36 <2e-16 ***
## pf_expression_control 0.49143 0.01006 48.85 <2e-16 ***
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
##
## Residual standard error: 0.8318 on 1376 degrees of freedom
## (80 observations deleted due to missingness)
## Multiple R-squared: 0.6342, Adjusted R-squared: 0.634
## F-statistic: 2386 on 1 and 1376 DF, p-value: < 2.2e-16
slope = 0.49143, intercept = 4.61707; pf_score = 4.61707 + 0.49143*pf_expression_control
# predict pf_score for a given pf_expression_control rating
pf_expression_control <- 6.7
pf_intercept <- 4.61707
pf_slope <- 0.49143
pf_score_pred <- round((pf_intercept + pf_slope*pf_expression_control),2)
paste0("A country's personal freedom score for a ", pf_expression_control,
" rating for pf_expression_control is ", pf_score_pred)## [1] "A country's personal freedom score for a 6.7 rating for pf_expression_control is 7.91"
# residual = actual - predicted
hfi %>% group_by(pf_score) %>% filter(pf_expression_control == 6.7)## # A tibble: 0 x 123
## # Groups: pf_score [0]
## # ... with 123 variables: year <dbl>, ISO_code <chr>, countries <chr>,
## # region <chr>, pf_rol_procedural <dbl>, pf_rol_civil <dbl>,
## # pf_rol_criminal <dbl>, pf_rol <dbl>, pf_ss_homicide <dbl>,
## # pf_ss_disappearances_disap <dbl>, pf_ss_disappearances_violent <dbl>,
## # pf_ss_disappearances_organized <dbl>,
## # pf_ss_disappearances_fatalities <dbl>, pf_ss_disappearances_injuries <dbl>,
## # pf_ss_disappearances <dbl>, pf_ss_women_fgm <dbl>, ...
# There is no observation with pf_expression_control = 6.7
hfi_samp <- hfi %>% group_by(pf_score) %>%
filter(pf_expression_control >= 6.7 & pf_expression_control <= 6.75) %>%
select(countries,pf_expression_control, pf_score)
head(hfi_samp, n = 2)## # A tibble: 2 x 3
## # Groups: pf_score [2]
## countries pf_expression_control pf_score
## <chr> <dbl> <dbl>
## 1 Belize 6.75 7.43
## 2 Chile 6.75 8.22
#residual <- pf_score_actualLooking at how the linear model predicted pf_score for about 2 countries:
pf_intercept <- 4.61707
pf_slope <- 0.49143
pf_exp_ctrl_belize <- hfi_samp$pf_expression_control[1]
pf_exp_ctrl_chile <- hfi_samp$pf_expression_control[2]
pf_score_belize <- hfi_samp$pf_score[1]
pf_score_chile <- hfi_samp$pf_score[2]
pf_score_pred_belize <- round((pf_intercept + pf_slope*pf_exp_ctrl_belize),2)
residual_belize <- round((pf_score_belize - pf_score_pred_belize),3)
paste0("The residual for pf_score for belize is ", residual_belize, " and this is an underestimate.")## [1] "The residual for pf_score for belize is -0.499 and this is an underestimate."
pf_score_pred_chile <- round((pf_intercept + pf_slope*pf_exp_ctrl_belize),2)
residual_chile <- round((pf_score_chile - pf_score_pred_chile),3)
paste0("The residual for pf_score for chile is ", residual_chile, " and this is an overestimate.")## [1] "The residual for pf_score for chile is 0.286 and this is an overestimate."
Model diagnostics
To assess whether the linear model is reliable, we need to check for (1) linearity, (2) nearly normal residuals, and (3) constant variability.
Linearity: You already checked if the relationship between pf_score and `pf_expression_control’ is linear using a scatterplot. We should also verify this condition with a plot of the residuals vs. fitted (predicted) values.
ggplot(data = m1, aes(x = .fitted, y = .resid)) +
geom_point() +
geom_hline(yintercept = 0, linetype = "dashed") +
xlab("Fitted values") +
ylab("Residuals")Notice here that m1 can also serve as a data set because stored within it are the fitted values (\(\hat{y}\)) and the residuals. Also note that we’re getting fancy with the code here. After creating the scatterplot on the first layer (first line of code), we overlay a horizontal dashed line at \(y = 0\) (to help us check whether residuals are distributed around 0), and we also reanme the axis labels to be more informative.
There is no apparent pattern in the residuals plots and this signifies that there may be a linear relationship between the two variables.
Nearly normal residuals: To check this condition, we can look at a histogram
ggplot(data = m1, aes(x = .resid)) +
geom_histogram(binwidth = 0.2) +
xlab("Residuals")or a normal probability plot of the residuals.
ggplot(data = m1, aes(sample = .resid)) +
stat_qq()Note that the syntax for making a normal probability plot is a bit different than what you’re used to seeing: we set sample equal to the residuals instead of x, and we set a statistical method qq, which stands for “quantile-quantile”, another name commonly used for normal probability plots.
From the histogram and normal plot, it can be seen that the residuals appear to follow a normal model. Hence, the nearly normal residuals condition appear to be met.
Constant variability:
From the residual vs fitted plot, the constant variability condition appears to be met. Based on the conditions for linear regression being satisfied, we can go ahead and use a linear regression to model the relationship.
More Practice
# plot pf_score vs hf_rank
ggplot(data = hfi, aes(x = hf_rank, y = pf_score)) + geom_point() +
stat_smooth(method = "lm", se = FALSE) + labs(title = "pf_score vs hf_rank")At a glance, there seems to be a negative linear relationship between the two variables
pf_expression_control and pf_score? Use the \(R^2\) values from the two model summaries to compare. Does your independent variable seem to predict your dependent one better? Why or why not?# summary of regression line for pf_score vs pf_expression_control
summary(lm_pf_score)##
## Call:
## lm(formula = pf_score ~ pf_expression_control, data = hfi)
##
## Residuals:
## Min 1Q Median 3Q Max
## -3.8467 -0.5704 0.1452 0.6066 3.2060
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) 4.61707 0.05745 80.36 <2e-16 ***
## pf_expression_control 0.49143 0.01006 48.85 <2e-16 ***
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
##
## Residual standard error: 0.8318 on 1376 degrees of freedom
## (80 observations deleted due to missingness)
## Multiple R-squared: 0.6342, Adjusted R-squared: 0.634
## F-statistic: 2386 on 1 and 1376 DF, p-value: < 2.2e-16
lm_pf_score_hf_rank <- lm(pf_score ~ hf_rank, data = hfi)
# summary of regression line for pf_score vs hf_rank
summary(lm_pf_score_hf_rank)##
## Call:
## lm(formula = pf_score ~ hf_rank, data = hfi)
##
## Residuals:
## Min 1Q Median 3Q Max
## -2.63445 -0.27084 0.02356 0.27505 2.08210
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) 9.4284792 0.0260355 362.1 <2e-16 ***
## hf_rank -0.0289217 0.0002927 -98.8 <2e-16 ***
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
##
## Residual standard error: 0.4835 on 1376 degrees of freedom
## (80 observations deleted due to missingness)
## Multiple R-squared: 0.8764, Adjusted R-squared: 0.8764
## F-statistic: 9760 on 1 and 1376 DF, p-value: < 2.2e-16
The R-squared for pf_score vs pf_expression control is 63.42% while the R-squared for pf_score vs hf_rank is 87.64%. The independent variable in the later seem to predict the dependent variable better because it has a higher R squared value of 87.64%.
*Surprisingly, ef_regulation has a positive relationship with ef_regulation_business_bribes. Although the relationship is weak.
prob12 <- lm(ef_regulation ~ ef_regulation_business_bribes, data = hfi)
summary(prob12)##
## Call:
## lm(formula = ef_regulation ~ ef_regulation_business_bribes, data = hfi)
##
## Residuals:
## Min 1Q Median 3Q Max
## -3.4769 -0.4489 0.0693 0.5726 1.6395
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) 5.46866 0.06019 90.85 <2e-16 ***
## ef_regulation_business_bribes 0.32296 0.01149 28.11 <2e-16 ***
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
##
## Residual standard error: 0.7772 on 1281 degrees of freedom
## (175 observations deleted due to missingness)
## Multiple R-squared: 0.3815, Adjusted R-squared: 0.381
## F-statistic: 790 on 1 and 1281 DF, p-value: < 2.2e-16