Using R for Introductory Statistics 2nd Edition – John Verzani

SKU : PRE-9781466590731

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Unlock the power of statistical analysis with Using R for Introductory Statistics, 2nd Edition by John Verzani. This comprehensive textbook provides a hands-on approach to mastering statistics using R, a leading statistical programming language. Learn to perform a wide range of statistical tasks, from calculating basic summary statistics to conducting complex hypothesis tests and regression analyses.

The book guides you through essential statistical concepts with clear explanations and practical examples. You’ll gain experience working with real-world datasets, developing your skills in data exploration, probability distributions, and various statistical methods. Through numerous exercises and examples, you’ll build a strong foundation in statistical thinking and R programming.

Whether you’re a student taking an introductory statistics course or a professional looking to enhance your data analysis skills, this book is an invaluable resource. It covers key topics including data visualization, hypothesis testing, and regression analysis, equipping you with the tools necessary for effective data interpretation and decision-making. Improve your data analysis abilities and prepare for further studies or careers in statistics, data science, or related fields.

This second edition offers updated content and exercises, reflecting the latest advancements in R and statistical methods. ISBNs available include: 9781466590731, 1466590734, 9781315360300, and 1315360306. Learn R, master statistics, and unlock the potential of data analysis.

Master statistics with R! John Verzani’s “Using R for Introductory Statistics, 2nd Edition” (ISBN: 9781466590731) provides a hands-on approach to statistical analysis using R. Learn data visualization, hypothesis testing, and regression. Ideal for students and professionals.