ROBUST STATISTICS IN R: METHODS RESISTANT TO OUTLIERS AND VIOLATIONS - Couverture souple

Livre 13 sur 29: REAL-WORLD DATA SCIENCE WITH R

BRYANT, WALTON

 
9798252772882: ROBUST STATISTICS IN R: METHODS RESISTANT TO OUTLIERS AND VIOLATIONS

L'édition de cet ISBN n'est malheureusement plus disponible.

Synopsis

ROBUST STATISTICS IN R: Methods Resistant to Outliers and Violations

In real-world data analysis, perfect datasets are rare. Outliers, noise, missing values, and violations of statistical assumptions can distort results and lead to poor decisions. This book provides a practical and reliable approach to solving these challenges using robust statistical methods in R.

Designed for data analysts, statisticians, researchers, and students, this book offers a complete guide to handling imperfect data with confidence. Instead of relying solely on traditional techniques that break under real-world conditions, readers will learn how to apply robust methods that remain stable, accurate, and trustworthy.

This book walks step-by-step through essential concepts and practical applications, including detecting and managing outliers, applying robust measures of central tendency and dispersion, and building resilient statistical models. It also covers advanced topics such as robust regression, multivariate analysis, and handling data contamination and violations of assumptions.

Each chapter combines clear explanations with hands-on R examples, allowing readers to implement techniques immediately. Practical case studies and visual illustrations help reinforce understanding and demonstrate how robust methods outperform classical approaches when dealing with messy data.

Inside this book, you will learn:

  • How to identify and handle outliers without losing valuable information

  • Robust measures such as median, MAD, trimmed means, and Winsorization

  • Advanced estimation techniques including M-estimators and MM-estimators

  • Robust regression methods such as Huber, Tukey, and quantile regression

  • Multivariate robust analysis including PCA and clustering

  • How to evaluate model performance using robust metrics

  • How to build a complete robust data analysis project in R

Whether you are working in finance, healthcare, business analytics, or academic research, this book equips you with the tools to handle real-world data challenges effectively.

If you want to move beyond fragile statistical methods and build models that truly reflect your data, this book provides the knowledge and practical skills you need.

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