Editing Statistics and Statistical Programming (Fall 2020)/pset1

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== Programming Challenges ==
== Programming Challenges ==
=== PC0. Get started===
=== PC0. Get started===
Open up RStudio, create a new file for this assignment (likely an R Markdown script), add relevant metadata (maybe your name, the date, and a title so that you/we know it is Problem Set 1 for this class?), and save it.
Open up RStudio, create a new file for this assignment (likely an R Markdown script), add relevant metadata (maybe your name, the date, and a title so that you/we know it is Problem Set 1 for this class?), and save it.
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=== PC1. Access and describe a dataset provided in an R library ===  
=== PC1. Access and describe a dataset provided in an R library ===  


# Load the <code>openintro</code> R package and the <code>county</code> dataset so that they are available to you. Let's get to know this data! You may already be familiar with it from Chapter 1 of the ''OpenIntro'' textbook and a codebook is available [https://www.openintro.org/data/index.php?data=county on the openintro website]. (''Note: there are a few other datasets in the <code>openintro</code> package with similar names. The one you want is <code>county</code> and is described on the site linked above.'')
# Load the <code>openintro</code> R package and the <code>counties</code> dataset so that they are available to you. Let's get to know this data!
# Find out the class of the <code>county</code> dataset object.  
# Find out the class of the <code>counties</code> dataset object.  
# Find out how many rows and how many columns are in the <code>county</code> dataset.  
# Find out how many rows and how many columns are in the <code>counties</code> dataset.  
# Find the names of all of the variables (columns) as well as the class of each of the variables.  
# Find the names of all of the variables (columns) as well as the class of each of them.  
# Summarize at least one continuous or discrete numeric variable in the dataset. Calculate the length, range (minimum and maximum), mean, and standard deviation.
# Summarize at least one continuous or discrete numeric variable in the dataset. Calculate the length, range (minimum and maximum), mean, and standard deviation.
# Plot a visual summary (maybe a boxplot or a histogram?) for the same numeric variable you used in PC1.4 above.  
# Plot a visual summary (maybe a boxplot or a histogram?) for the same numeric variable you used in PC1.4 above.  
# Summarize at least one categorical variable in the dataset (e.g., if the variable takes values of TRUE/FALSE or NA, how many of each are value are there?).
# Summarize at least one categorical variable in the dataset (e.g., if the variable takes values of TRUE/FALSE or NA, how many of each are value are there?).  


=== PC2. Work with a dataset from the web ===
=== PC2. Work with a dataset from the web ===
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::<code>set.seed(<your.birthdate>)</code></br>
::<code>set.seed(<your.birthdate>)</code></br>
::<code>sample(x= c(1:20), size=1))</code>
::<code>sample(x= c(1:20), size=1))</code>
# Navigate to the [https://communitydata.science/~ads/teaching/2020/stats/data data repository for the course] and find the RData file in the <code>week_03</code> subdirectory with your dataset number from PC2.1 (e.g., <code>group_<output>.Rdata</code> where <output> is replaced with the dataset number).  
# Navigate to the [https://communitydata.science/~ads/teaching/2020/stats/data data repository for the course] and download the RData file in the <code>week_02</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!
# Find and 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.
# 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.
# Create a visualization of your variable: at the very least, create a boxplot or a histogram.
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