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Modern Time Series Analysis with R: Practical forecasting and impact estimation with tidy, reproducible workflows [Pehme köide]

  • Formaat: Paperback / softback, 628 pages, kõrgus x laius: 235x191 mm
  • Ilmumisaeg: 20-Feb-2026
  • Kirjastus: Packt Publishing Limited
  • ISBN-10: 1805124013
  • ISBN-13: 9781805124016
  • Formaat: Paperback / softback, 628 pages, kõrgus x laius: 235x191 mm
  • Ilmumisaeg: 20-Feb-2026
  • Kirjastus: Packt Publishing Limited
  • ISBN-10: 1805124013
  • ISBN-13: 9781805124016
Gain expertise in modern time series forecasting and causal inference in R to solve real-world business problems with reproducible, high-quality code

Key Features

Explore forecasting and causal inference with practical R examples Build reproducible, high-quality time series workflows using tidyverse and modern R packages Apply models to real-world business scenarios with step-by-step guidance Purchase of the print or Kindle book includes a free PDF eBook

Book DescriptionModern Time Series Analysis with R is a comprehensive, hands-on guide to mastering the art of time series analysis using the R programming language. Written by leading experts in applied statistics and econometrics, this book helps data scientists, analysts, and developers bridge the gap between traditional statistical theory and practical business applications. Starting with the foundations of R and tidyverse, youll explore the core components of time series data, data wrangling, and visualization techniques. The chapters then guide you through key modeling approaches, ranging from classical methods like ARIMA and exponential smoothing to advanced computational techniques, such as machine learning, deep learning, and ensemble forecasting. Beyond forecasting, youll discover how time series can be applied to causal inference, anomaly detection, change point analysis, and multiple time series modeling. Practical examples and reproducible code will empower you to assess business problems, choose optimal solutions, and communicate results effectively through dynamic R-based reporting. By the end of this book, youll be confident in applying modern time series methods to real-world data, delivering actionable insights for strategic decision-making in business, finance, technology, and beyond.What you will learn

Understand the core concepts and structure of time series data Wrangle and visualize time series effectively Apply transformations and decomposition techniques Build and compare univariate forecasting models Apply statistical, ML, and DL models strategically based on context Forecast hierarchical and grouped time series Measure causal impact using interrupted time series analysis Detect anomalies, structural changes, and handle missing data

Who this book is forThis book is for data scientists, analysts, and developers who want to master time series analysis using R. It is ideal for professionals in finance, retail, technology, and research, as well as students seeking practical, business-oriented approaches to forecasting and causal inference. Basic knowledge of R is assumed, but no advanced mathematics is required.
Table of Contents

R, RStudio, and R packages
Objects and Functions in R
Data Input/Output in R
Time Series Characteristics
Time Series Data Wrangling and Visualization
Business Applications of Time Series Analysis
Time Series Adjustments, Transformations, and Decomposition
Time Series Features
Time Series Smoothing and Filtering
Basics of Forecasting
Exponential Smoothing
ARIMA Forecasting Models
Advanced Computational Methods for Forecasting
Forecasting Models for Multiple Time Series
Causal Impact Estimation
Changepoint Detection
Anomaly Detection and Imputation
Dr. Yeasmin Khandakar is a data scientist with over 15 years of experience across diverse sectors, including FinTech (Portland House Group), MedTech (Optalert), retail (Coles, Officeworks) and transport (Transurban). She has a PhD from Monash University and is the co-author of the paper Automatic time series forecasting: the forecast package for R, which has generated over 5,900+ citations. Dr. Khandakar specializes in solving strategic business challenges by integrating advanced statistical methods with machine learning and deep learning, and robust time-series techniques. Dr. Roman Ahmed is an experienced statistician with a PhD specializing in time-series forecasting. He has more than two decades of experience across the corporate and academic sectors. With a career including prominent technical leadership at Optus, Xero, and ANZ Bank, he excels at applying high-impact forecasting, econometric, and machine learning solutions to business strategy. Roman has published methodological and applied research in top-tier journals and has presented work at prestigious conferences. His expertise lies in translating sophisticated methodological research into scalable, real-world tools, particularly within the R ecosystem. Rob J. Hyndman is Professor of Econometrics and Business Statistics at Monash University and a leading global authority on forecasting and time series analysis. He is a Fellow of the Australian Academy of Science and co-author of the influential textbook Forecasting: Principles and Practice.