Editing Statistics and Statistical Programming (Fall 2020)/pset2

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<div class="noautonum">__TOC__</div>
<small>[[Statistics_and_Statistical_Programming_(Fall_2020)#Week_4_.2810.2F6.2C_10.2F8.29|← Back to Week 4]]</small>
<small>[[Statistics_and_Statistical_Programming_(Fall_2020)#Week_4_.2810.2F6.2C_10.2F8.29|← Back to Week 4]]</small>


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Load your vector from [[Statistics_and_Statistical_Programming_(Fall_2020)/pset1|Problem Set #1]] (Week 3) again (you might want to give it a new name) and perform the same cleanup steps you did in PC2.5 and PC2.6 last week (recode negative values as missing and log-transform the data). Now, compare the vector <code>x</code> from Problem Set #1 with the first column (<code>x</code>) of the data you imported for this assignment (Problem Set #2, i.e., the current dataset you just imported from a .csv file). They should be similar, but are they ''exactly'' the same? Use R code to show your answer.
Load your vector from [[Statistics_and_Statistical_Programming_(Fall_2020)/pset1|Problem Set #1]] (Week 3) again (you might want to give it a new name) and perform the same cleanup steps you did in PC2.5 and PC2.6 last week (recode negative values as missing and log-transform the data). Now, compare the vector <code>x</code> from Problem Set #1 with the first column (<code>x</code>) of the data you imported for this assignment (Problem Set #2, i.e., the current dataset you just imported from a .csv file). They should be similar, but are they ''exactly'' the same? Use R code to show your answer.


===PC5. Cleanup/tidy your data===
===PC6. Cleanup/tidy your data===
Once again, some cleanup and recoding is needed for this week's data. It turns out that the variables <code>i</code> and <code>j</code> are really dichotomous "true/false" variables that have been coded as 0 and 1 respectively in this dataset. Recode these columns as <code>logical</code> (i.e., "TRUE" or "FALSE" values). The variable <code>k</code> is really a categorical variable. Recode <code>k</code> as a factor and change the numbers so that they are replaced with the following values or levels: 0="none", 1="some", 2="lots", 3="all". *Your data file may only contains the values 1,2,3. The goal is to end up with a factor (so the command <code>class(k)</code> should return the value <code>TRUE</code>) where those text strings are the levels of the factor.
Once again, some cleanup and recoding is needed for this week's data. It turns out that the variables <code>i</code> and <code>j</code> are really dichotomous "true/false" variables that have been coded as 0 and 1 respectively in this dataset. Recode these columns as <code>logical</code> (i.e., "TRUE" or "FALSE" values). The variable <code>k</code> is really a categorical variable. Recode <code>k</code> as a factor and change the numbers so that they are replaced with the following values or levels: 0="none", 1="some", 2="lots", 3="all". The goal is to end up with a factor (so the command <code>class(k)</code> should return the value <code>TRUE</code>) where those text strings are the levels of the factor.
 
===PC6. Calculate conditional summary statistics===
It's common to consider the conditional distributions of a continuous variable within the levels of a second, categorical variable. Please describe the distribution of <code>x</code> within each of the four levels of <code>k</code>. For each level of <code>k</code> calculate the mean and standard deviation of <code>x</code>.


===PC7. Create a bivariate table===
===PC6. Create a bivariate table===
Now that you have some categorical variables to work with, let's go ahead and create a bivariate table so that you can examine the distributions of some of these values. Use the <code>table()</code> command to create a cross-tabulation of the recoded versions of the <code>k</code> variable and the <code>j</code> variable.  
Now that you have some categorical variables to work with, let's go ahead and create a bivariate table so that you can examine the distributions of some of these values. Use the <code>table()</code> command to create a cross-tabulation of the recoded versions of the <code>k</code> variable and the <code>j</code> variable.  


===PC8. Create a bivariate visualization===
===PC7. Create a bivariate visualization===
Visualize two variables in the Problem Set #2 dataset using <code>ggplot2</code> and the <code>geom_point()</code> function to produce a scatterplot of <code>x</code> on the x-axis and <code>y</code> on the y-axis. '''Optional bonus:''' Incorporate any of the other variables on other dimensions (e.g., color, shape, and/or size are all good options). If you run into any issues plotting these dimensions, revisit the examples in the tutorial and the ggplot2 documentation and consider that ggplot2 can be very picky about the classes of objects.
Visualize two variables in the Problem Set #2 dataset using <code>ggplot2</code> and the <code>geom_point()</code> function to produce a scatterplot. First, plot <code>x</code> on the x-axis and <code>y</code> on the y-axis. Second, visualize the other variables on other dimensions (e.g., color, shape, and size seem reasonable). If you run into any issues plotting these dimensions, revisit the examples in the tutorial and the ggplot2 documentation and consider that ggplot2 can be very picky about the classes of objects...


== Statistical Questions ==
== Statistical Questions ==


===SQ1. Interpret bivariate analyses===
===SQ1===


Return to the dataset you imported and worked with in the programming challenges above. Imagine that it comes from a year-long study of bicyclists using a combination of survey and ride-tracking data from the Divvy bikeshare members in the Chicagoland area conducted a few years ago (let's say 2018, just to pick a year). Each row in the data corresponds to a single Divvy cyclist/member and the variables correspond to the following measures:  
Return to the dataset you imported and worked with in the programming challenges above. Imagine that it comes from a year-long study of bicyclists using a combination of survey and ride-tracking data from the Divvy bikeshare members in the Chicagoland area conducted a few years ago (let's say 2018, just to pick a year). Each row in the data corresponds to a single Divvy cyclist/member and the variables correspond to the following measures:  
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* <code>y</code>: A continuous measure of income calculated in tens of thousands of dollars and scaled so that "0" = average income for a Divvy member (i.e., a value of "5" = $50,000 more per year than an average Divvy member).
* <code>y</code>: A continuous measure of income calculated in tens of thousands of dollars and scaled so that "0" = average income for a Divvy member (i.e., a value of "5" = $50,000 more per year than an average Divvy member).


# Return to the conditional means you created in PC6 above. Given the information you now have about the study, how would you interpret them? Does there seem to be any sort of relationship between the two variables?
# Return to the bivariate contingency table you created in PC## above. Given the information you now have about the study, how would you interpret it? Does there seem to be any sort of association between the two variables?
# Return to the bivariate contingency table you created in PC7 above. Given the information you now have about the study, how would you interpret it? Does there seem to be any sort of relationship between the two variables?
 
# Return to the scatterplot you created in PC8 above. Given the information you now have about the study, how would you interpret it? Does there seem to be any sort of relationship between the two variables?
# Return to the scatterplot you created in PC## above. Given the information you now have about the study, how would you interpret it? Does there seem to be any sort of association between the two variables?
 
===SQ2===


===SQ2. Birthdays revisited (Optional bonus!)===
===Optional bonus SQ3===


'''Optional bonus statistical question'''
''In the previous session, we talked about birthdays in the context of one of the textbook exercises for ''OpenIntro'' Chapter 3. Here's an opportunity to apply your knowledge and extend that exercise. Note that you can absolutely use R to help calculate the solutions to both parts of this problem. That said, it's a super famous problem and answers/examples are all over the internet, so if you want to challenge yourself, don't look at them while you're working on it! The only hint I'll give you is that you may find [https://en.wikipedia.org/wiki/Binomial_coefficient binomial coefficients] useful and the <code>choose()</code>) function can calculate them for you in R.''


''We talked about birthdays in the context of one of the textbook exercises for ''OpenIntro'' Chapter 3. Here's an opportunity to apply your knowledge and extend that exercise. Note that you can absolutely use R to help calculate the solutions to both parts of this problem. That said, it's a super famous problem and answers/examples are all over the internet, so if you want to challenge yourself, don't look at them while you're working on it! The only hint I'll give you is that you may find [https://en.wikipedia.org/wiki/Binomial_coefficient binomial coefficients] useful and the <code>choose()</code>) function can calculate them for you in R.''
# The last time I taught this course, there were 25 people in it (including the teaching team). Imagine that I offered you a choice between two bets: Bet #1 is determined by the flip of a fair coin (you can choose heads or tails and you win the bet if your choice turns out to be correct). Bet #2 is determined by whether any two members of that previous version of the class shared a birthday (if a birthday was shared I win the bet, if no shared birthdays you win the bet). Assuming you want to win the bet, which bet should you choose?


# The first time I taught this course, there were 25 people in it (including the members of the teaching team). Imagine that I offered you a choice between two bets: Bet #1 is determined by the flip of a fair coin. You can choose heads or tails and you win the bet if your choice turns out to be correct). Bet #2 is determined by whether any two members of that previous version of the class shared a birthday. If a birthday was shared I win the bet, and if no shared birthdays were shared you win the bet. Assuming you want the best chance of winning, which bet should you choose?
# Now calculate the probability that any two members of our 7 person class share a birthday and compare this probability with the results of SQ2.1 above.
# Now calculate the probability that any two members of our 7 person class share a birthday and compare this probability with the results of SQ2.1 above.


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