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Exploring Data Science with R and the Tidyverse

Exploring Data Science with R and the Tidyverse

Jerry Bonnell / Mitsunori Ogihara

161,49 €
IVA incluido
Disponible
Editorial:
Taylor & Francis Ltd
Año de edición:
2023
Materia
Probabilidad y estadística
ISBN:
9781032341705
161,49 €
IVA incluido
Disponible

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This book introduces the reader to data science using R and the tidyverse. No prerequisite knowledge is needed in college-level programming or mathematics (e.g., calculus or statistics). The book is self-contained so readers can immediately begin building data science workflows without needing to reference extensive amounts of external resources for onboarding. The contents are targeted for undergraduate students but are equally applicable to students at the graduate level and beyond. The book develops concepts using many real-world examples to motivate the reader. Upon completion of the text, the reader will be able to:Gain proficiency in R programming Load and manipulate data frames, and 'tidy' them using tidyverse toolsConduct statistical analyses and draw meaningful inferences from them Perform modeling from numerical and textual dataGenerate data visualizations (numerical and spatial) using ggplot2 and understand what is being representedAn accompanying R package 'edsdata' contains synthetic and real datasets used by the textbook and is meant to be used for further practice. An exercise set is made available and designed for compatibility with automated grading tools for instructor use.

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Otros libros del autor

  • Exploring Data Science with R and the Tidyverse
    Jerry Bonnell / Mitsunori Ogihara
    This book introduces the reader to data science using R and the tidyverse. No prerequisite knowledge is needed in college-level programming or mathematics (e.g., calculus or statistics). The book is self-contained so readers can immediately begin building data science workflows. ...