Applied Regression Modeling 3rd Edition – Iain Pardoe

SKU : PRE-9781119615866

$31.85

CAUTION: You’re about to purchase a high quality copy (no missing contents), NOT a Paper Book! It can be printed, stored and read on any devices. You’ll get this copy via EMAIL within 24 after purchasing.

Unlock the power of predictive analytics with Applied Regression Modeling, 3rd Edition by Iain Pardoe. This comprehensive guide provides a thorough understanding of regression analysis, equipping you with the skills to analyze data and make informed decisions. From fundamental concepts to advanced techniques, this book serves as an invaluable resource for students and professionals alike.

Delve into the core principles of linear regression, logistic regression, and generalized linear models. The book meticulously explains these essential methods, providing clear explanations and practical examples. You’ll learn how to build, interpret, and evaluate regression models, mastering crucial techniques for data analysis and prediction.

Beyond the fundamentals, Applied Regression Modeling explores advanced topics including model selection, diagnostic techniques, and forecasting. These crucial aspects ensure you can build robust and reliable models, accurately predicting future outcomes. Real-world examples and exercises are integrated throughout the text, solidifying your understanding and allowing you to apply your knowledge effectively.

Enhance your statistical modeling skills and become proficient in using regression models for a wide range of applications. Whether you’re a student aiming to master statistical concepts or a professional seeking to improve your data analysis capabilities, this book provides the knowledge and tools you need to succeed. Improve your decision-making process by leveraging the power of regression analysis.

This edition includes ISBNs 9781119615866, 1119615860, 9781119615903, and 1119615909.

Master regression analysis with Iain Pardoe’s Applied Regression Modeling, 3rd Edition (ISBN: 9781119615866). This comprehensive guide covers linear, logistic, and generalized linear models, equipping you with practical skills for data analysis and prediction.