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Classification And Regression Trees (Wadsworth Statistics/Probability),New
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The Methodology Used To Construct Tree Structured Rules Is The Focus Of This Monograph. Unlike Many Other Statistical Procedures, Which Moved From Pencil And Paper To Calculators, This Text'S Use Of Trees Was Unthinkable Before Computers. Both The Practical And Theoretical Sides Have Been Developed In The Authors' Study Of Tree Methods. Classification And Regression Trees Reflects These Two Sides, Covering The Use Of Trees As A Data Analysis Method, And In A More Mathematical Framework, Proving Some Of Their Fundamental Properties.
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- Q: What is the page count of this book? A: This book contains three hundred sixty-eight pages. It offers a comprehensive overview of tree structured rules in statistics.
- Q: What are the dimensions of this book? A: The dimensions of this book are six point fourteen inches in length, zero point eighty-three inches in width, and nine point twenty-one inches in height.
- Q: What kind of binding does this book have? A: This book is available in paperback binding. This makes it lightweight and easy to handle.
- Q: Who is the author of this book? A: The author of this book is Leo Breiman. He is known for his work in statistics and probability.
- Q: What is the genre of this book? A: This book falls under the Graph Theory category. It focuses on methods related to classification and regression trees.
- Q: How do I apply the concepts in this book? A: To apply the concepts, read through the chapters that explain tree structured methods in data analysis. Practice using the examples provided.
- Q: Is this book suitable for beginners? A: Yes, this book can be suitable for beginners. However, some familiarity with basic statistical concepts may enhance understanding.
- Q: What audience is this book intended for? A: This book is intended for students and professionals in statistics, data analysis, and related fields.
- Q: Can I use this book for self-study? A: Yes, this book is ideal for self-study. It explains tree methods in detail, making it accessible for independent learners.
- Q: How should I store this book to keep it in good condition? A: Store this book in a dry place, away from direct sunlight. Keeping it on a shelf will prevent damage to the binding.
- Q: Is there a specific way to clean this book? A: Yes, to clean this book, gently wipe the cover with a dry cloth. Avoid using water or cleaning solutions.
- Q: What do I do if the book arrives damaged? A: If the book arrives damaged, contact the seller for a return or exchange. Most sellers have policies for such situations.
- Q: Does this book come with a warranty? A: No, this book does not come with a warranty. However, check the seller's return policy for any guarantees.
- Q: Can I return this book if I don’t like it? A: Yes, you can return this book if it doesn’t meet your expectations. Check the specific return policy of the retailer.
- Q: How does this book compare to other statistics books? A: This book uniquely focuses on tree structured rules, setting it apart from general statistics books that cover a broader range.