Code
library(tidyverse)
::opts_chunk$set(echo = TRUE, warning=FALSE, message=FALSE) knitr
Caitlin Rowley
October 20, 2022
Today’s challenge is to:
pivot_longer
Read in one (or more) of the following datasets, using the correct R package and command.
# read in data (I am having trouble setting my working directory):
animal_weight <- read_csv("_data/animal_weight.csv")
# This data set, which appears to represent animal weights by IPCC area. The IPCC, or Intergovernmental Panel on Climate Change, is the United Nations body for assessing the science related to climate change, so this is clearly data collected from a governmental source. After reading in the data set, we can see that the data set has 9 rows/cases and 17 columns/variables. One variable represents IPCC areas, and the remaining 16 variables represent varying species/breeds of livestock. The values for each observation represent the animals' weight.
Describe the data, and be sure to comment on why you are planning to pivot it to make it “tidy”
The first step in pivoting the data is to try to come up with a concrete vision of what the end product should look like - that way you will know whether or not your pivoting was successful.
One easy way to do this is to think about the dimensions of your current data (tibble, dataframe, or matrix), and then calculate what the dimensions of the pivoted data should be.
Suppose you have a dataset with \(n\) rows and \(k\) variables. In our example, 3 of the variables are used to identify a case, so you will be pivoting \(k-3\) variables into a longer format where the \(k-3\) variable names will move into the names_to
variable and the current values in each of those columns will move into the values_to
variable. Therefore, we would expect \(n * (k-3)\) rows in the pivoted dataframe!
Lets see if this works with a simple example.
# A tibble: 6 × 5
country year trade outgoing incoming
<chr> <dbl> <chr> <dbl> <dbl>
1 Mexico 1980 NAFTA 1351. 827.
2 USA 1990 NAFTA 682. 811.
3 France 1980 EU 1432. 1272.
4 Mexico 1990 NAFTA 881. 1100.
5 USA 1980 NAFTA 1213. 1460.
6 France 1990 EU 460. 170.
[1] 6
[1] 5
[1] 12
[1] 5
Or simple example has \(n = 6\) rows and \(k - 3 = 2\) variables being pivoted, so we expect a new dataframe to have \(n * 2 = 12\) rows x \(3 + 2 = 5\) columns.
Document your work here.
Because each row represents several observations (16 observations about the weights of varying species/breeds of livestock for every case), we will need to tidy the data. To do this, I will consolidate the livestock species/breeds into one category, then create a separate column/variable that captures weight by case.
We know that there are 9 cases and 16 livestock-specific variables in this data set, so the final pivoted data table should have 3 columns (IPCC area, livestock, weight) and 144 rows.
Any additional comments?
Now we will pivot the data, and compare our pivoted data dimensions to the dimensions calculated above as a “sanity” check.
# A tibble: 12 × 5
country year trade trade_direction trade_value
<chr> <dbl> <chr> <chr> <dbl>
1 Mexico 1980 NAFTA outgoing 1351.
2 Mexico 1980 NAFTA incoming 827.
3 USA 1990 NAFTA outgoing 682.
4 USA 1990 NAFTA incoming 811.
5 France 1980 EU outgoing 1432.
6 France 1980 EU incoming 1272.
7 Mexico 1990 NAFTA outgoing 881.
8 Mexico 1990 NAFTA incoming 1100.
9 USA 1980 NAFTA outgoing 1213.
10 USA 1980 NAFTA incoming 1460.
11 France 1990 EU outgoing 460.
12 France 1990 EU incoming 170.
Yes, once it is pivoted long, our resulting data are \(12x5\) - exactly what we expected!
Document your work here. What will a new “case” be once you have pivoted the data? How does it meet requirements for tidy data?
Error in pivot_longer(animals, col = -"IPCC Area", names_to = "Livestock", : object 'animals' not found
Now that I have pivoted this data, I have a case that includes Indian Subcontinent (IPCC Area), Cattle - Dairy (Livestock), and 275 (Weight). This meets tidy data requirements because each variable has its own column, each observation has its own row, and each value has its own cell.
Any additional comments?
---
title: "Challenge 3 Solutions"
author: "Caitlin Rowley"
desription: "Tidy Data: Pivoting"
date: "10/20/2022"
format:
html:
toc: true
code-fold: true
code-copy: true
code-tools: true
categories:
- challenge_3
- animal_weights
- eggs
- australian_marriage
- usa_households
- sce_labor
---
```{r}
#| label: setup
#| warning: false
#| message: false
library(tidyverse)
knitr::opts_chunk$set(echo = TRUE, warning=FALSE, message=FALSE)
```
## Challenge Overview
Today's challenge is to:
1. read in a data set, and describe the data set using both words and any supporting information (e.g., tables, etc)
2. identify what needs to be done to tidy the current data
3. anticipate the shape of pivoted data
4. pivot the data into tidy format using `pivot_longer`
## Read in data
Read in one (or more) of the following datasets, using the correct R package and command.
- animal_weights.csv ⭐
- eggs_tidy.csv ⭐⭐ or organiceggpoultry.xls ⭐⭐⭐
- australian_marriage\*.xls ⭐⭐⭐
- USA Households\*.xlsx ⭐⭐⭐⭐
- sce_labor_chart_data_public.xlsx 🌟🌟🌟🌟🌟
```{r}
# read in data (I am having trouble setting my working directory):
animal_weight <- read_csv("_data/animal_weight.csv")
# This data set, which appears to represent animal weights by IPCC area. The IPCC, or Intergovernmental Panel on Climate Change, is the United Nations body for assessing the science related to climate change, so this is clearly data collected from a governmental source. After reading in the data set, we can see that the data set has 9 rows/cases and 17 columns/variables. One variable represents IPCC areas, and the remaining 16 variables represent varying species/breeds of livestock. The values for each observation represent the animals' weight.
```
### Briefly describe the data
Describe the data, and be sure to comment on why you are planning to pivot it to make it "tidy"
## Anticipate the End Result
The first step in pivoting the data is to try to come up with a concrete vision of what the end product *should* look like - that way you will know whether or not your pivoting was successful.
One easy way to do this is to think about the dimensions of your current data (tibble, dataframe, or matrix), and then calculate what the dimensions of the pivoted data should be.
Suppose you have a dataset with $n$ rows and $k$ variables. In our example, 3 of the variables are used to identify a case, so you will be pivoting $k-3$ variables into a longer format where the $k-3$ variable names will move into the `names_to` variable and the current values in each of those columns will move into the `values_to` variable. Therefore, we would expect $n * (k-3)$ rows in the pivoted dataframe!
### Example: find current and future data dimensions
Lets see if this works with a simple example.
```{r}
#| tbl-cap: Example
df<-tibble(country = rep(c("Mexico", "USA", "France"),2),
year = rep(c(1980,1990), 3),
trade = rep(c("NAFTA", "NAFTA", "EU"),2),
outgoing = rnorm(6, mean=1000, sd=500),
incoming = rlogis(6, location=1000,
scale = 400))
df
#existing rows/cases
nrow(df)
#existing columns/cases
ncol(df)
#expected rows/cases
nrow(df) * (ncol(df)-3)
# expected columns
3 + 2
```
Or simple example has $n = 6$ rows and $k - 3 = 2$ variables being pivoted, so we expect a new dataframe to have $n * 2 = 12$ rows x $3 + 2 = 5$ columns.
### Challenge: Describe the final dimensions
Document your work here.
Because each row represents several observations (16 observations about the weights of varying species/breeds of livestock for every case), we will need to tidy the data. To do this, I will consolidate the livestock species/breeds into one category, then create a separate column/variable that captures weight by case.
We know that there are 9 cases and 16 livestock-specific variables in this data set, so the final pivoted data table should have 3 columns (IPCC area, livestock, weight) and 144 rows.
```{r}
# calculation for number of rows:
9*16
```
Any additional comments?
## Pivot the Data
Now we will pivot the data, and compare our pivoted data dimensions to the dimensions calculated above as a "sanity" check.
### Example
```{r}
#| tbl-cap: Pivoted Example
df<-pivot_longer(df, col = c(outgoing, incoming),
names_to="trade_direction",
values_to = "trade_value")
df
```
Yes, once it is pivoted long, our resulting data are $12x5$ - exactly what we expected!
### Challenge: Pivot the Chosen Data
Document your work here. What will a new "case" be once you have pivoted the data? How does it meet requirements for tidy data?
```{r}
# pivot data
animals_pivot <- pivot_longer(animals,col=-'IPCC Area', names_to="Livestock", values_to="Weight")
```
Now that I have pivoted this data, I have a case that includes Indian Subcontinent (IPCC Area), Cattle - Dairy (Livestock), and 275 (Weight). This meets tidy data requirements because each variable has its own column, each observation has its own row, and each value has its own cell.
Any additional comments?