Statistics and Statistical Programming (Fall 2020)/pset4
Programming Challenges
This week we'll work with the full (simulated!) dataset from which I drew the 20 group samples you analyzed in Problem sets 1 and 2.
PC1. Import the data
The dataset is available in yet another plain text format: a "tab-delimited" (a.k.a., tab-separated or TSV) file. You can find it in the week_05
subdirectory in the data repository for the course. Go ahead and inspect the data and load it into R (Hint: You can use either the tidyverse read_tsv()
function or the Base R read.delim()
function to do this).
PC2. The sample mean
Calculate the mean of the variable x
in the full dataset. Go back to your Week 3 problem set and revisit the mean you calculated for x
. Be prepared to discuss the conceptual relationship of these two means to each other.
PC3. The standard error of the sample mean
Again, using the variable x
from your Problem Set 2 data, compute the 95% confidence interval for the mean of this vector "by hand" (i.e., in R) using the normal formula for standard error . (Bonus: Do this by writing a function.)
PC4. The population mean
Compare the mean of x
from your Problem Set 2 sample — and your confidence interval — to the population mean (the version of x
in the current week's dataset). Is the full dataset (this week's) mean inside your sample (Problem Set 2) confidence interval? Do you find this surprising? Why or why not? Be prepared to discuss the relationship of these values to each other.
PC5. Compare sample and population distributions
Let's look beyond the mean. Compare the distribution from your Problem Set 2 sample of x
to the true population of x
. Draw histograms and compute other descriptive and summary statistics. What do you notice? Be prepared to discuss and explain any differences.
PC6. Standard deviations vs. standard errors
Calculate the mean of x
for each of the groups in the population (within each group
in the population dataset) and the standard deviation of this distribution of conditional means. Compare this standard deviation to the standard error of the mean you calculated in PC3 above. Explain the relationship between these values.
PC7. A simulation
I want you to conduct a simulation that demonstrates a fundamental insight of statistics. Please see the R tutorial materials from this week and last week for useful functions that can help you do this.
- (a) Create a vector of 10,000 randomly generated numbers that are uniformly distributed between 0 and 9.
- (b) Calculate the mean of the vector you just created. Plot a histogram of the distribution.
- (c) Create 100 random samples of 2 items each from your randomly generated data and take the mean of each sample. Create a new vector that contains those means. Describe/display the distribution of those means.
- (d) Do (c) except make the items 10 items in each sample instead of 2. Then do (c) again except with 100 items. Be ready to describe how the histogram changes as the sample size increases. (Bonus challenge: Write a function to complete this part.)
Statistical Questions
SQ1. Why the simulation in PC7?
Compare the results from PC7 with those in the example simulation from last week's R tutorial materials. What fundamental statistical principle is illustrated by these simulations? Why is this an important simulation for thinking about hypothesis testing?
Read something from Reinhart
Empirical Paper Questions
Revisit the paper we read for Week 1 of the course:
- Kramer, Adam D. I., Jamie E. Guillory, and Jeffrey T. Hancock. 2014. Experimental Evidence of Massive-Scale Emotional Contagion through Social Networks. Proceedings of the National Academy of Sciences 111(24):8788–90. [Open Access]
Come to class prepared to discuss your answers to the following questions
EQ1. Hypotheses
Write down, in your own words, the key pairs of null/alternative hypotheses tested in the paper (hint: the four pairs that correspond to the main effects represented in the figure).
EQ2. Describe the effects
Describe, in your own words, the main effects estimated in the paper for these four key pairs of hypotheses.
EQ3. Statistical vs. practical significance
The authors report Cohen's d along with their regression estimates of the main effects. Look up the formula for Cohen's d. Discuss the substantive or practical significance of the estimates given the magnitudes of the d values reported.