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Learning R Programming

Learning R Programming

By : Ren
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Learning R Programming

Learning R Programming

By: Ren

Overview of this book

R is a high-level functional language and one of the must-know tools for data science and statistics. Powerful but complex, R can be challenging for beginners and those unfamiliar with its unique behaviors. Learning R Programming is the solution - an easy and practical way to learn R and develop a broad and consistent understanding of the language. Through hands-on examples you'll discover powerful R tools, and R best practices that will give you a deeper understanding of working with data. You'll get to grips with R's data structures and data processing techniques, as well as the most popular R packages to boost your productivity from the offset. Start with the basics of R, then dive deep into the programming techniques and paradigms to make your R code excel. Advance quickly to a deeper understanding of R's behavior as you learn common tasks including data analysis, databases, web scraping, high performance computing, and writing documents. By the end of the book, you'll be a confident R programmer adept at solving problems with the right techniques.
Table of Contents (16 chapters)
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Using apply-family functions


Previously, we talked about using a for loop to repeat evaluating an expression with an iterator on a vector or list. In practice, however, the for loop is almost the last choice because an alternative way is much cleaner and easier to write and read when each iteration is independent of each other.

For example, the following code uses for to create a list of three independent, normally distributed random vectors whose length is specified by vector len:

len <- c(3, 4, 5)
# first, create a list in the environment.
x <- list()
# then use `for` to generate the random vector for each length
for (i in 1:3) {
  x[[i]] <- rnorm(len[i])
}
x
## [[1]]
## [1] 1.4572245 0.1434679 -0.4228897
##
## [[2]]
## [1] -1.4202269 -0.7162066 -1.6006179 -1.2985130
##
## [[3]]
## [1] -0.6318412  1.6784430  0.1155478  0.2905479 -0.7363817 

The preceding example is simple, but the code is quite redundant...

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Learning R Programming
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