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Titlebook: Beginning Data Science in R; Data Analysis, Visua Thomas Mailund Book 20171st edition Thomas Mailund 2017 R.programming.statistics.data sci

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楼主: Encounter
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ng. .What You Will Learn.Perform data science and analytics using statistics and the R programming language.Visualize and explore data, including working with large data sets found in big data.Build an R package.Test and check your code.Practice version control.Profile and optimize your code.Who This Book Is For.Those wi978-1-4842-2671-1
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cessful lecture seriesDiscover best practices for data analysis and software development in R and start on the path to becoming a fully-fledged data scientist. This book teaches you techniques for both data manipulation and visualization and shows you the best way for developing new software package
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Information Processing in The Nervous System to load the data into R and then figuring out how to transform it into a shape you can readily analyze. The code in this chapter, and all the following, assumes that the packages magrittr and ggplot2 have been loaded (just to avoid explicitly doing so in each example).
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Single Cells versus Neuronal Assembliesntrol systems, Subversion and git. Of these, git is the most widely used, and although these things are very subjective of course, I think that it is also the better system. It is certainly the system we use here.
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Unsupervised Learning,his. Sometimes unknown structures can tell us more about the data. Sometimes we want to explicitly avoid an unknown structure (if we have datasets that are supposed to be similar, we don’t want to discover later that there are systematic differences). Whatever the reason, unsupervised learning concerns finding unknown structures in data.
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