1 Loading Libraries

#install.packages("broom")
#install.packages("ggplot2")

library(psych) # for the describe() command
library(broom) # for the augment() command
library(ggplot2) # to visualize our results
## 
## Attaching package: 'ggplot2'
## The following objects are masked from 'package:psych':
## 
##     %+%, alpha

2 Importing Data

# For HW, import the dataset you cleaned previously, this will be the dataset you'll use throughout the rest of the semester

d <- read.csv(file="Data/regression_labdata.csv", header=T)

3 State Your Hypothesis

We hypothesize that social exclusion will significantly predict loneliness, and that the relationship will be positive.

My independent variable is: social exclusion My dependent variable is: loneliness

4 Check Your Variables

# you only need to check the variables you're using in the current analysis
# although you checked them previously, it's always a good idea to look them over again to be sure that everything is correct

str(d)
## 'data.frame':    3166 obs. of  5 variables:
##  $ ID        : chr  "R_BJN3bQqi1zUMid3" "R_2TGbiBXmAtxywsD" "R_12G7bIqN2wB2N65" "R_39pldNoon8CePfP" ...
##  $ gender    : chr  "f" "m" "m" "f" ...
##  $ race      : chr  "white" "white" "white" "other" ...
##  $ loneliness: num  4.33 4.17 1.83 5.17 3.67 ...
##  $ exclusion : num  3.4 3.4 2.2 2.8 3 2.4 2.3 3 3 3.7 ...
# you can use the describe() command on an entire dataframe (d) or just on a single variable
describe(d)
##            vars    n    mean     sd  median trimmed     mad min  max  range
## ID*           1 3166 1583.50 914.09 1583.50 1583.50 1173.48 1.0 3166 3165.0
## gender*       2 3166    1.28   0.49    1.00    1.21    0.00 1.0    3    2.0
## race*         3 3166    5.53   2.13    7.00    5.88    0.00 1.0    7    6.0
## loneliness    4 3166    4.47   1.32    4.67    4.53    1.48 1.0    7    6.0
## exclusion     5 3166    3.13   0.45    3.10    3.13    0.44 1.1    4    2.9
##             skew kurtosis    se
## ID*         0.00    -1.20 16.25
## gender*     1.39     0.86  0.01
## race*      -0.98    -0.68  0.04
## loneliness -0.36    -0.45  0.02
## exclusion  -0.24     0.44  0.01
# next, use histograms to examine your continuous variables
hist(d$exclusion)

hist(d$loneliness)

# last, use scatterplots to examine your continuous variables together
# Remember to put INDEPENDENT FIRST, so it goes on the x-axis
plot(d$exclusion, d$loneliness)

5 Run a Simple Regression

# to calculate standardized coefficients for the regression, we have to standardize our IV
d$exclusion_std <- scale(d$exclusion, center=T, scale=T)


# use the lm() command to run the regression
# dependent/outcome variable on the left of the ~, independent/predictor variable on the right.
reg_model <- lm(loneliness ~ exclusion_std, data = d)

# NO PEEKING AT YOUR MODEL RESULTS YET!

6 Check Your Assumptions

6.1 Simple Regression Assumptions

  • Should have two measurements for each participant
  • Variables should be continuous and normally distributed
  • Relationship between the variables should be linear
  • Outliers should be identified and removed
  • Residuals should be normal and have constant variance Note: we will NOT be evaluating whether our data meets this last assumption in this lab/homework

6.2 Create plots and view residuals

# do not edit this line of code
model.diag.metrics <- augment(reg_model)

# only replace the variables in 3 places in this line of code
ggplot(model.diag.metrics, aes(x = d$exclusion_std, y = d$loneliness)) +
  geom_point() +
  stat_smooth(method = lm, se = FALSE) +
  geom_segment(aes(xend = d$exclusion_std, yend = .fitted), color = "red", size = 0.3)
## Warning: Using `size` aesthetic for lines was deprecated in ggplot2 3.4.0.
## ℹ Please use `linewidth` instead.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## `geom_smooth()` using formula = 'y ~ x'

6.3 Check linearity with Residuals vs Fitted plot

The plot below shows the residuals for each case and the fitted line. The red line is the average residual for the specified point of the dependent variable. If the assumption of linearity is met, the red line should be horizontal. This indicates that the residuals average to around zero. You can see that for this lab, the plot shows some non-linearity because there are more data points below the regression line than there are above it. Thus, there are some negative residuals that don’t have positive residuals to cancel them out. However, a bit of deviation is okay – just like with skewness and kurtosis with non-normality – there is a range of acceptability that we can work in before non-linearity becomes a critical issue.

For some examples of good Residuals vs Fitted plot and ones that show serious errors, check out this page. Looking at these examples, you can see the first case has a plot in which the red line sticks pretty closely to the zero line, while the other cases show some serious deviation. Our plot for the lab is much closer to the ‘good’ plot than it is to the ‘serious issues’ plots. So we’ll consider our data okay and proceed with our analysis. Obviously, this is quite a subjective decision. The key takeaway is that these evaluations are closely tied to the context of our sample, our data, and what we’re studying. It’s almost always a judgement call.

You’ll notice in the bottom right corner, there are some points with numbers included: these are participants (“cases”, indicated by row number) who have the most influence on the regression line (and so they might outliers). We’ll cover more about outliers in the next section.

[NOTE: All of the above text is informational. You do NOT need to edit it for the HW.]

plot(reg_model, 1)

Interpretation: Our Residual vs Fitted plot suggests there is some minor non-linearity between our IV and DV, but we are okay to proceed with the regression.

For your HW: You need to generate this plot and then talk about how your plot compares to the ‘good’ / ‘bad, problematic’ plots linked to above in the “Issues with my Data” section below. Is it closer to the ‘good’ plots or one of the ‘bad’ plots? This is going to be a judgement call, so just do your best!

6.4 Check for outliers

The plot below addresses leverage, or how much each data point is able to influence the regression line. Outliers are points that have undue influence on the regression line, the way that Bill Gates entering the room has an undue influence on the mean income.

The Cook’s distance plot is a visualization of a score called (you guessed it) Cook’s distance, calculated for each case (aka participant) in the dataframe. Cook’s distance tells us how much the regression would change if the data point was removed. Ideally, we want all points to have the same influence on the regression line, although we accept that there will be some variability. The cutoff for a high Cook’s distance score is .5. For our data, some points do exert more influence than others, but none of them are close to the cutoff.

[NOTE: All of the above text is informational. You do NOT need to edit it for the HW.]

# Cook's distance
plot(reg_model, 4)

Interpretation: Our data does not have any severe outliers.

For your HW: You need to generate the plot, assess Cook’s distance in your dataset and identify any potential cases/participants that are prominent outliers using the cutoff for a high Cook’s distance score of .5. You will summarize this in the “Issues with my Data” section below.

6.5 Issues with My Data

Before interpreting our results, we assessed our variables to see if they met the assumptions for a simple linear regression. Analysis of a Residuals vs Fitted plot suggested that there is some minor non-linearity, but not enough to violate the assumption of linearity. We also checked Cook’s distance plot to detect outliers. All cases were below the recommended cutoff for Cook’s distance of 0.5, so no outliers were detected.

7 View Statistical Test Output

summary(reg_model)
## 
## Call:
## lm(formula = loneliness ~ exclusion_std, data = d)
## 
## Residuals:
##     Min      1Q  Median      3Q     Max 
## -4.3288 -0.8262  0.1240  0.9225  3.3753 
## 
## Coefficients:
##               Estimate Std. Error t value Pr(>|t|)    
## (Intercept)    4.47447    0.02159  207.25   <2e-16 ***
## exclusion_std  0.52185    0.02159   24.17   <2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 1.215 on 3164 degrees of freedom
## Multiple R-squared:  0.1558, Adjusted R-squared:  0.1556 
## F-statistic: 584.1 on 1 and 3164 DF,  p-value: < 2.2e-16
# note for write-up section below: to type lowercase Beta (ß) you need to hold down Alt key and type 225 on numeric keypad. If that doesn't work (upon releasing the Alt key), you should be able to copy/paste it from somewhere else.

Effect size, based on Regression Beta (Estimate) value Trivial: Less than 0.10 Small: 0.10–0.29 Medium: 0.30–0.49 Large: 0.50 or greater

8 Write Up Results

To test our hypothesis that social exclusion will significantly predict loneliness, and that the relationship will be positive, we used a simple linear regression to model the relationship between those variables. We confirmed that our data met the assumptions of a linear regression, checking the linearity of the relationship using a Residuals vs Fitted plot and checking for outliers using Cook’s distance plot. Note: we are skipping the assumptions of normality and homogeneity of variance for this assignment.

As predicted, we found that social exclusion significantly predicted loneliness, Adj. R2 = .16, F(1,3164) = 584.1, p < .001. The relationship between social exclusion and loneliness was positive, ß = .52, t(3164) = 24.17, p < .001 (refer to Figure 1). According to Cohen (1988), this constitutes a large effect size (> .50).

References

Cohen J. (1988). Statistical Power Analysis for the Behavioral Sciences. New York, NY: Routledge Academic.