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Statistics and Statistical Programming (Winter 2021)/Problem set 4
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=== PC2. Work with a downloaded dataset === # Run the following two commands in your R script. Be sure to replace <code><'''YOUR BIRTHDATE'''></code> with your birthday in ''yyyyddmm'' format (e.g., January 06, 2021 would be <code>20200106</code>). If you run the commands correctly (or maybe even not), R will return a single random integer value between 1 and 20. This integer will be your dataset number for the purposes of PC2: <syntaxhighlight lang="R"> set.seed(<YOUR BIRTHDATE>) sample(x=seq(1, 20), size=1) </syntaxhighlight> # Navigate to the <code>datasets</code> in the course Dropbox repository and find the RData file in the <code>problem_set_4</code> subdirectory with your dataset number from PC2.1 (e.g., <code>group_<output>.Rdata</code> where <output> is replaced with the dataset number). # Load the RData file for your dataset number into R. It should contain one variable. Find that variable! # Calculate summary statistics for your variable. Be sure to include the length, minimum, maximum, mean, and standard deviation. # Create a visualization of your variable: at the very least, create a boxplot or a histogram. # Some of you may have negative numbers. Let's imagine we have a substantive or theoretical reason to exclude negative values from our analysis. Write code to recode all negative numbers as missing (i.e. <code>NA</code>) in your dataset. Now compute the mean and standard deviation again and note any changes. # Log transform your dataset (i.e., take the natural logarithm for each value). If you have very small values (close to zero) it may be helpful to add 1 to each value before you take the natural logarithm (this avoids nonsense output in the results). Calculate the new mean and standard deviation of the transformed variable. Also create a new histogram or boxplot.
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