Data Wrangling with dplyr – Part 2

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Introduction

In the previous post we learnt about dplyr verbs and used them to compute average order value for an online retail company data. In this post, we will learn to combine tables using different *_join functions provided in dplyr.

Libraries, Code & Data

We will use the following packages:

The data sets can be downloaded from here and the codes from here.

library(dplyr)
library(readr)
options(tibble.width = Inf)

Case Study

For our case study, we will use two data sets. The first one, order, contains details of orders placed by different customers. The second data set, customer contains details of each customer. The below table displays the details stored in each data set.



Let us import both the data sets using read_csv.

Data: Orders

order <- read_delim('https://raw.githubusercontent.com/rsquaredacademy/datasets/master/order.csv', delim = ';')
order
## # A tibble: 300 x 3
##       id order_date amount
##    <dbl> <chr>       <dbl>
##  1   368 7/2/2016     365.
##  2   286 11/2/2016   2064.
##  3    28 2/22/2017    432.
##  4   309 3/5/2017     480.
##  5     2 12/28/2016   235.
##  6    31 12/30/2016  2745.
##  7   179 12/21/2016  2358.
##  8   484 11/24/2016  1031.
##  9   115 9/9/2016    1218.
## 10   340 5/6/2017    1184.
## # ... with 290 more rows

Data: Customers

customer <- read_delim('https://raw.githubusercontent.com/rsquaredacademy/datasets/master/customer.csv', delim = ';')
customer
## # A tibble: 91 x 3
##       id first_name city      
##    <dbl> <chr>      <chr>     
##  1     1 Elbertine  California
##  2     2 Marcella   Colorado  
##  3     3 Daria      Florida   
##  4     4 Sherilyn   Distric...
##  5     5 Ketty      Texas     
##  6     6 Jethro     California
##  7     7 Jeremiah   California
##  8     8 Constancia Texas     
##  9     9 Muire      Idaho     
## 10    10 Abigail    Texas     
## # ... with 81 more rows

We will explore the following in the case study:

  • details of customers who have placed orders and their order details
  • details of customers and their orders irrespective of whether a customer has placed orders or not
  • customer details for each order
  • details of customers who have placed orders
  • details of customers who have not placed orders
  • details of all customers and all orders

Example Data

We will use another data set to illustrate how the different joins work. You can view the example data sets below.



Inner Join


Inner join return all rows from Age where there are matching values in Height, and all columns from Age and Height. If there are multiple matches between Age and Height, all combination of the matches are returned.


Case Study: Details of customers who have placed orders and their order details

To get data for all those customers who have placed orders in the past let us join the order data with the customer data using inner_join.

inner_join(customer, order, by = "id")
## # A tibble: 55 x 5
##       id first_name city       order_date amount
##    <dbl> <chr>      <chr>      <chr>       <dbl>
##  1     2 Marcella   Colorado   12/28/2016   235.
##  2     2 Marcella   Colorado   8/31/2016   1150.
##  3     5 Ketty      Texas      1/17/2017    346.
##  4     6 Jethro     California 1/27/2017   2317.
##  5     7 Jeremiah   California 6/21/2016    136.
##  6     7 Jeremiah   California 2/13/2017   1407.
##  7     7 Jeremiah   California 7/8/2016    1914.
##  8     8 Constancia Texas      11/5/2016   2461.
##  9     8 Constancia Texas      5/19/2017   2714.
## 10     9 Muire      Idaho      12/28/2016   187.
## # ... with 45 more rows

Left Join


Left join return all rows from Age, and all columns from Age and Height. Rows in Age with no match in Height will have NA values in the new columns. If there are multiple matches between Age and Height, all combinations of the matches are returned.


Case Study: Details of customers and their orders irrespective of whether a customer has

placed orders or not.

To get data for all those customers and their orders irrespective of whether a customer has placed orders or not let us join the order data with the customer data using left_join.

left_join(customer, order, by = "id")
## # A tibble: 104 x 5
##       id first_name city       order_date amount
##    <dbl> <chr>      <chr>      <chr>       <dbl>
##  1     1 Elbertine  California <NA>          NA 
##  2     2 Marcella   Colorado   12/28/2016   235.
##  3     2 Marcella   Colorado   8/31/2016   1150.
##  4     3 Daria      Florida    <NA>          NA 
##  5     4 Sherilyn   Distric... <NA>          NA 
##  6     5 Ketty      Texas      1/17/2017    346.
##  7     6 Jethro     California 1/27/2017   2317.
##  8     7 Jeremiah   California 6/21/2016    136.
##  9     7 Jeremiah   California 2/13/2017   1407.
## 10     7 Jeremiah   California 7/8/2016    1914.
## # ... with 94 more rows

Right Join


Right join return all rows from Height, and all columns from Age and Height. Rows in Height with no match in Age will have NA values in the new columns. If there are multiple matches between Age and Height, all combinations of the matches are returned.


Case Study: Customer details for each order

To get customer data for all orders, let us join the order data with the customer data using right_join.

right_join(customer, order, by = "id")
## # A tibble: 300 x 5
##       id first_name city      order_date amount
##    <dbl> <chr>      <chr>     <chr>       <dbl>
##  1   368 <NA>       <NA>      7/2/2016     365.
##  2   286 <NA>       <NA>      11/2/2016   2064.
##  3    28 Avrit      Texas     2/22/2017    432.
##  4   309 <NA>       <NA>      3/5/2017     480.
##  5     2 Marcella   Colorado  12/28/2016   235.
##  6    31 Clemmie    Tennessee 12/30/2016  2745.
##  7   179 <NA>       <NA>      12/21/2016  2358.
##  8   484 <NA>       <NA>      11/24/2016  1031.
##  9   115 <NA>       <NA>      9/9/2016    1218.
## 10   340 <NA>       <NA>      5/6/2017    1184.
## # ... with 290 more rows

Semi Join


Semi join return all rows from Age where there are matching values in Height, keeping just columns from Age. A semi join differs from an inner join because an inner join will return one row of Age for each matching row of Height, where a semi join will never duplicate rows of Age.


Case Study: Details of customers who have placed orders

To get customer data for all orders where customer data exists, let us join the order data with the customer data using semi_join. You can observe that data is returned only for those cases where customer data is present.

semi_join(customer, order, by = "id")
## # A tibble: 42 x 3
##       id first_name city      
##    <dbl> <chr>      <chr>     
##  1     2 Marcella   Colorado  
##  2     5 Ketty      Texas     
##  3     6 Jethro     California
##  4     7 Jeremiah   California
##  5     8 Constancia Texas     
##  6     9 Muire      Idaho     
##  7    15 Valentijn  California
##  8    16 Monique    Missouri  
##  9    20 Colette    Texas     
## 10    28 Avrit      Texas     
## # ... with 32 more rows

Anti Join


Anti join return all rows from Age where there are not matching values in Height, keeping just columns from Age.


Case Study: Details of customers who have not placed orders

To get details of customers who have not placed orders, let us join the order data with the customer data using anti_join.

anti_join(customer, order, by = "id")
## # A tibble: 49 x 3
##       id first_name city      
##    <dbl> <chr>      <chr>     
##  1     1 Elbertine  California
##  2     3 Daria      Florida   
##  3     4 Sherilyn   Distric...
##  4    10 Abigail    Texas     
##  5    11 Wynne      Georgia   
##  6    12 Pietra     Minnesota 
##  7    13 Bram       Iowa      
##  8    14 Rees       New York  
##  9    17 Orazio     Louisiana 
## 10    18 Mason      Texas     
## # ... with 39 more rows

Full Join


Full join return all rows and all columns from both Age and Height. Where there are not matching values, returns NA for the one missing.



Case Study: Details of all customers and all orders

To get details of all customers and all orders, let us join the order data with the customer data using full_join.

full_join(customer, order, by = "id")
## # A tibble: 349 x 5
##       id first_name city       order_date amount
##    <dbl> <chr>      <chr>      <chr>       <dbl>
##  1     1 Elbertine  California <NA>          NA 
##  2     2 Marcella   Colorado   12/28/2016   235.
##  3     2 Marcella   Colorado   8/31/2016   1150.
##  4     3 Daria      Florida    <NA>          NA 
##  5     4 Sherilyn   Distric... <NA>          NA 
##  6     5 Ketty      Texas      1/17/2017    346.
##  7     6 Jethro     California 1/27/2017   2317.
##  8     7 Jeremiah   California 6/21/2016    136.
##  9     7 Jeremiah   California 2/13/2017   1407.
## 10     7 Jeremiah   California 7/8/2016    1914.
## # ... with 339 more rows

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