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Mastering Machine Learning with R

You're reading from   Mastering Machine Learning with R Advanced machine learning techniques for building smart applications with R 3.5

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Product type Paperback
Published in Jan 2019
Publisher
ISBN-13 9781789618006
Length 354 pages
Edition 3rd Edition
Languages
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Author (1):
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Cory Lesmeister Cory Lesmeister
Author Profile Icon Cory Lesmeister
Cory Lesmeister
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Table of Contents (16) Chapters Close

Preface 1. Preparing and Understanding Data FREE CHAPTER 2. Linear Regression 3. Logistic Regression 4. Advanced Feature Selection in Linear Models 5. K-Nearest Neighbors and Support Vector Machines 6. Tree-Based Classification 7. Neural Networks and Deep Learning 8. Creating Ensembles and Multiclass Methods 9. Cluster Analysis 10. Principal Component Analysis 11. Association Analysis 12. Time Series and Causality 13. Text Mining 14. Creating a Package 15. Other Books You May Enjoy

Handling duplicate observations

The easiest way to get started is to use the base R duplicated() function to create a vector of logical values that match the data observations. These values will consist of either TRUE or FALSE where TRUE indicates a duplicate. Then, we'll create a table of those values and their counts and identify which of the rows are dupes:

dupes <- duplicated(gettysburg)

table(dupes)
dupes
FALSE TRUE
587 3

which(dupes == "TRUE")
[1] 588 589
If you want to see the actual rows and even put them into a tibble dataframe, the janitor package has the get_dupes() function. The code for that would be simply: df_dupes <- janitor::get_dupes(gettysburg).

To rid ourselves of these duplicate rows, we put the distinct() function for the dplyr package to good use, specifying .keep_all = TRUE to make sure we return all of the features into the new tibble. Note that .keep_all defaults to FALSE:

gettysburg <- dplyr::distinct(gettysburg, .keep_all = TRUE)

Notice that, in the Global Environment, the tibble is now a dimension of 587 observations of 26 variables/features.

With the duplicate observations out of the way, it's time to start drilling down into the data and understand its structure a little better by exploring the descriptive statistics of the quantitative features.

Descriptive statistics

Traditionally, we could use the base R summary() function to identify some basic statistics. Now, and recently I might add, I like to use the package sjmisc and its descr() function. It produces a more readable output, and you can assign that output to a dataframe. What works well is to create that dataframe, save it as a .csv, and explore it at your leisure. It automatically selects numeric features only. It also fits well with tidyverse so that you can incorporate dplyr functions such as group_by() and filter(). Here's an example in our case where we examine the descriptive stats for the infantry of the Confederate Army. The output will consist of the following:

  • var: feature name
  • type: integer
  • n: number of observations
  • NA.prc: percent of missing values
  • mean
  • sd: standard deviation
  • se: standard error
  • md: median
  • trimmed: trimmed mean
  • range
  • skew
gettysburg %>%
dplyr::filter(army == "Confederate" & type == "Infantry") %>%
sjmisc::descr() -> descr_stats

readr::write_csv(descr_stats, 'descr_stats.csv')

The following is abbreviated output from the preceding code saved to a spreadsheet:

In this one table, we can discern some rather interesting tidbits. In particular is the percent of missing values per feature. If you modify the precious code to examine the Union Army, you'll find that there're no missing values. The reason the usurpers from the South had missing values is based on a couple of factors; either shoddy staff work in compiling the numbers on July 3rd or the records were lost over the years. Note that, for the number of men captured, if you remove the missing value, all other values are zero, so we could just replace the missing value with it. The Rebels did not report troops as captured, but rather as missing, in contrast with the Union.

Once you feel comfortable with the descriptive statistics, move on to exploring the categorical features in the next section.

Exploring categorical variables

When it comes to an understanding of your categorical variables, there're many different ways to go about it. We can easily use the base R table() function on a feature. If you just want to see how many distinct levels are in a feature, then dplyr works well. In this example, we examine type, which has three unique levels:

dplyr::count(gettysburg, dplyr::n_distinct(type))

The output of the preceding code is as follows:

# A tibble: 1 x 2
`dplyr::n_distinct(type)` n
<int> <int>
3 587

Let's now look at a way to explore all of the categorical features utilizing tidyverse principles. Doing it this way always allows you to save the tibble and examine the results in depth as needed. Here is a way of putting all categorical features into a separate tibble:

gettysburg_cat <-
gettysburg[, sapply(gettysburg, class) == 'character']

Using dplyr, you can now summarize all of the features and the number of distinct levels in each:

gettysburg_cat %>%
dplyr::summarise_all(dplyr::funs(dplyr::n_distinct(.)))

The output of the preceding code is as follows:

# A tibble: 1 x 9
type state regiment_or_battery brigade division corps army july1_Commander Cdr_casualty
<int> <int> <int> <int> <int> <int> <int> <int> <int>
3 30 275 124 38 14 2 586 6

Notice that there're 586 distinct values to july1_Commander. This means that two of the unit Commanders have the same rank and last name. We can also surmise that this feature will be of no value to any further analysis, but we'll deal with that issue in a couple of sections ahead.

Suppose we're interested in the number of observations for each of the levels for the Cdr_casualty feature. Yes, we could use table(), but how about producing the output as a tibble as discussed before? Give this code a try:

gettysburg_cat %>% 
dplyr::group_by(Cdr_casualty) %>%
dplyr::summarize(num_rows = n())

The output of the preceding code is as follows:

# A tibble: 6 x 2
Cdr_casualty num_rows
<chr> <int>
1 captured 6
2 killed 29
3 mortally wounded 24
4 no 405
5 wounded 104
6 wounded-captured 19

Speaking of tables, let's look at a tibble-friendly way of producing one using two features. This code takes the idea of comparing commander casualties by army:

gettysburg_cat %>%
janitor::tabyl(army, Cdr_casualty)

The output of the preceding code is as follows:

army   captured killed mortally wounded   no  wounded  wounded-captured
Confederate 2 15 13 165 44 17
Union 4 14 11 240 60 2

Explore the data on your own and, once you're comfortable with the categorical variables, let's tackle the issue of missing values.

You have been reading a chapter from
Mastering Machine Learning with R - Third Edition
Published in: Jan 2019
Publisher:
ISBN-13: 9781789618006
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