8 Decision Tree Books Kirk Borne and Experts Rely On

Discover top Decision Tree Books recommended by Kirk Borne, Lior Rokach, and Marjorie Corman Aaron for practical and theoretical mastery

Kirk Borne
Updated on June 25, 2025
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What if the secret to smarter, faster decisions lies in understanding just a few well-crafted branches? Decision trees, a cornerstone of machine learning and data analysis, shape how we predict, diagnose, and strategize across disciplines. Right now, their relevance is soaring as industries demand clearer, data-driven insights to navigate complexity.

Kirk Borne, Principal Data Scientist at Booz Allen, recognized the power of classic works like Classification and Regression Trees early in his career, deepening his grasp of algorithmic structures crucial for modern analytics. Meanwhile, Lior Rokach, a professor and AI innovator, brings forward-thinking updates to decision tree applications in data mining, bridging theory and practice. Legal expert Marjorie Corman Aaron applies decision trees to litigation strategy, illustrating their reach beyond traditional tech fields.

While these expert-curated books provide proven frameworks, readers seeking content tailored to their specific backgrounds, goals, or industries might consider creating a personalized Decision Tree book that builds on these insights, ensuring your learning journey aligns perfectly with your needs.

Best for mastering tree algorithms
Kirk Borne, Principal Data Scientist at Booz Allen and a leading voice in data science, highlights this book for its in-depth coverage of decision tree techniques fundamental to machine learning. His endorsement comes from a place of extensive experience analyzing classification, regression trees, and ensemble methods like random forests. Borne’s recommendation underscores how this text helped refine his understanding of algorithmic structures critical for advanced data science applications, especially when navigating complex datasets.
KB

Recommended by Kirk Borne

Principal Data Scientist at Booz Allen

#MachineLearning articles on Classification with Decision Trees, Regression Trees, and Random Forests: —————— #BigData #DataScience #AI #Statistics #DataScientists #Coding #Algorithms #abdsc —————— ➕See this book: (from X)

Classification and Regression Trees book cover

by Leo Breiman, Jerome Friedman, R.A. Olshen, Charles J. Stone··You?

Leo Breiman and his coauthors bring decades of expertise in statistics and mathematics to this foundational text, which explores constructing tree-structured decision rules with a rigorous blend of theory and application. You’ll gain a deep understanding of how classification and regression trees function both as practical data analysis tools and within a mathematical framework, including proofs of their fundamental properties. The book dives into the mechanics behind tree methods, making it especially useful if you're working with predictive modeling or want to grasp how decision trees can be built and validated. It’s particularly suited for data scientists, statisticians, and machine learning practitioners committed to mastering the underlying algorithms rather than just using software packages.

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Best for beginners learning coding
Chris Smith is a Python developer and machine learning expert with extensive experience creating algorithms, having authored several books on data science and machine learning. His expertise shines through in this visually driven introduction, designed to help you not only understand but also implement decision trees and random forests with confidence, making complex topics approachable for beginners.
2017·168 pages·Decision Tree, Machine Learning, Programming, Algorithms, Decision Trees

The breakthrough moment came when Chris Smith, a seasoned Python developer and machine learning specialist, designed this visual guide to demystify decision trees and random forests for beginners. You’ll find clear explanations paired with practical Python examples that help you build your own models step-by-step, breaking down complex algorithms into digestible visuals and code snippets. This book suits anyone eager to grasp how these models influence areas from credit scoring to product development, offering foundational skills that apply across industries. Chapters detail both the theory behind tree construction and hands-on coding exercises, making it a solid choice if you want to understand and implement these algorithms yourself.

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Best for personalized learning paths
This AI-created book on decision trees is designed around your background and interests. You share your existing knowledge, specific topics within decision trees you want to focus on, and your learning goals. Then the book is crafted to provide exactly the depth and examples you need, making complex concepts accessible and relevant. Personalizing this journey means you avoid unnecessary material and dive straight into what matters most to you.
2025·50-300 pages·Decision Tree, Decision Trees, Algorithm Design, Splitting Criteria, Pruning Techniques

This tailored book delves into the core concepts and practical applications of decision trees, providing a customized learning path that matches your prior knowledge and specific interests. It explores essential decision tree structures, splitting criteria, pruning techniques, and performance evaluation methods, guiding you through each topic with clarity and depth. By focusing on your unique goals, this personalized resource examines real-world examples and diverse use cases, bridging the gap between theoretical foundations and practical requirements. Whether you aim to master algorithm design, data mining integration, or industry-specific applications, this tailored book offers a focused and engaging exploration that enriches your understanding and skills in decision tree mastery.

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Best for advanced data mining
Lior Rokach, a computer scientist and professor at Ben-Gurion University with over 400 peer-reviewed papers and 22 patents, brings unparalleled expertise to this book. His background in designing machine learning algorithms and leading AI startups underpins the deep dive into decision trees presented here. Rokach’s extensive research and real-world experience make this a valuable resource for anyone wanting to master decision tree techniques in data mining and machine learning.
2014·305 pages·Data Mining, Decision Tree, Decision Theory, Machine Learning, Cost-Sensitive Learning

Drawing from his extensive experience as a professor and AI entrepreneur, Lior Rokach presents a focused examination of decision trees within data mining. This second edition expands on foundational methods with new chapters addressing cost-sensitive learning, imbalanced data, and privacy concerns, offering you a thorough understanding of how decision trees adapt to complex, real-world scenarios. You’ll gain insight into advanced techniques like active learning and applications beyond classification, including practical guidance on open-source tools. This book suits those deeply involved in machine learning and data analysis who want to refine their expertise with updated methodologies and nuanced perspectives on decision tree applications.

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Best for legal decision analysis
Marjorie Corman Aaron, a professor at the University of Cincinnati College of Law with over thirty years of mediation and decision analysis experience, authored this book to fill a gap she observed in legal education. Drawing on her background as Executive Director of Harvard Law School’s Program on Negotiation and her litigation practice, she offers a systematic approach to decision trees tailored for legal professionals. Her expertise in negotiation, mediation, and client counseling uniquely equips her to guide lawyers through the complexities of assessing cases and advising clients using decision tree methodology.
2019·229 pages·Decision Tree, Decision Making, Litigation Strategy, Legal Analysis, Risk Assessment

Marjorie Corman Aaron's decades of legal and mediation experience led to a focused guide on applying decision tree analysis in litigation and settlement decisions. You learn how to systematically evaluate options like suing or settling by quantifying risks, costs, and client interests through well-structured decision trees. The book walks through case examples, probability estimation techniques, and ways to align analytical rigor with client communication and negotiation dynamics. If you're a lawyer, mediator, or legal professional seeking to bring clarity and precision to complex case assessments, this book offers a methodical framework grounded in real-world practice without unnecessary complexity.

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Barry de Ville, a technical and analytical consultant at SAS Institute, brings his expert knowledge to this book, drawing on his experience conducting workshops and tutorials in data mining. His deep understanding of SAS Enterprise Miner underpins a clear guide to decision trees tailored for business intelligence professionals. This background ensures the book serves as a practical resource for analysts eager to expand their expertise beyond introductory data mining concepts.
2006·240 pages·Decision Tree, Business Intelligence, Data Mining, Decision Trees, Predictive Analytics

The breakthrough moment came when Barry de Ville leveraged his extensive experience at SAS Institute to demystify decision trees within business intelligence and data mining. This book guides you through applying decision trees using SAS Enterprise Miner, illustrating how these models complement other techniques like regression and cluster analysis. You’ll gain insights into constructing, interpreting, and deploying decision trees in predictive analytics, with concrete examples drawn from real business contexts such as purchase behavior and risk assessment. While it assumes some familiarity with data mining basics, the book offers a deeper dive that benefits analysts seeking to sharpen their business intelligence skills through practical application.

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Best for rapid skill growth
This AI-created book on decision trees is crafted based on your background, skill level, and specific goals. You share which areas of decision trees you want to focus on, and this tailored guide delivers exactly the content and exercises that suit your needs. By concentrating on your learning preferences, it helps you build skills quickly and confidently without unnecessary detours.
2025·50-300 pages·Decision Tree, Decision Trees, Tree Construction, Splitting Criteria, Pruning Techniques

This tailored 30-Day Decision Tree Accelerator explores accelerated learning paths for mastering decision tree concepts through personalized exercises and real-world examples. It focuses on your interests and matches your background to provide a clear, engaging progression that strengthens understanding of decision tree structures, splitting criteria, pruning techniques, and practical applications. The book reveals how decision trees function in various contexts and offers tailored practice scenarios that address your specific goals, enabling efficient skill acquisition. By concentrating on your unique learning needs, this personalized guide bridges foundational theory with hands-on experience, making the complex processes behind decision trees accessible and relevant. It fosters a deep comprehension that supports applying decision trees effectively in data analysis, machine learning, and problem-solving.

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Best for healthcare practitioners
Tracy Walton is a massage therapist, researcher, and educator specializing in oncology massage therapy. Drawing from her extensive clinical experience and NIH-funded research collaborations, she wrote this book to equip massage therapists with a systematic approach to assess medical conditions. Her expertise bridges practical massage application and scientific rigor, making this decision tree approach a valuable tool for therapists working with clients who have complex health issues.
2010·432 pages·Massage, Decision Tree, Medical Conditions, Client Assessment, Therapeutic Techniques

Tracy Walton brings decades of hands-on experience and academic rigor to this specialized guide for massage therapists navigating medical complexities. Drawing from her background in massage therapy and cancer care research, Walton presents a clear decision tree format that helps you assess over 50 medical conditions, deciding which massage techniques are appropriate or contraindicated. You’ll find practical tools like client interview questions tailored to uncover how specific conditions manifest uniquely in each individual. This book suits massage therapists seeking to deepen their clinical judgment when working with clients facing chronic or acute health challenges, especially in oncology settings.

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Best for family law professionals
Leslie M. Drozd, PhD, brings over two decades of experience as a licensed psychologist and child custody evaluator to this work. Her extensive background in family therapy and involvement in setting model standards for custody evaluations uniquely position her to guide professionals through refining their evaluation methods. This book reflects her commitment to helping evaluators adopt clear, structured tools like decision trees to improve decision-making and support better outcomes for families navigating custody issues.
2013·224 pages·Parental Law, Decision Tree, Custody Evaluations, Parenting Plans, Bias Reduction

Leslie M. Drozd, a seasoned psychologist and child custody evaluator, offers a structured approach to improving the accuracy and transparency of parenting plan and custody evaluations. You’ll find practical tools like decision trees, charts, and checklists that help organize evidence and reduce bias, aligning closely with judicial reasoning. The book breaks down how to systematically gather and analyze data, emphasizing parenting outcomes over legal ownership battles. It's particularly useful if you’re involved in family law or custody evaluation and want a clearer framework to make defensible, thoughtful decisions.

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Best for drama therapy clinicians
Paige Dickinson is an associate professor at Eckerd College focusing on pedagogy and professional growth in drama therapy, recognized with the John Satterfield Outstanding Mentor Award. Sally Bailey directs the Drama Therapy Program at Kansas State University and has earned multiple awards from the North American Drama Therapy Association. Their combined expertise grounds this book, which aims to provide a systematic method for making informed intervention choices in drama therapy, offering a valuable resource for students and practitioners seeking clarity and consistency in their clinical decision-making.
2021·272 pages·Decision Tree, Therapy, Decision Trees, Drama Therapy, Treatment Planning

Paige Dickinson and Sally Bailey draw from their extensive academic and practical experience to offer a clear framework for selecting drama therapy interventions. This book guides you through the decision-making process with a focus on how to match specific therapeutic techniques to client needs, breaking down complex clinical choices into manageable steps. You’ll find chapters that explain core drama therapy tools, treatment planning, and case examples linked to common diagnoses, making it especially helpful if you’re new to the field. While it’s suited for early career professionals and students, seasoned practitioners will appreciate the shared language and structured approach it fosters for clinical communication.

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Conclusion

Across these eight books, a few themes stand out: the balance of theory and hands-on application, the versatility of decision trees across sectors, and the importance of structured thinking in complex decision-making. Whether you’re a data scientist, healthcare provider, legal professional, or therapist, these resources offer frameworks to sharpen your analysis and decision skills.

If you're navigating machine learning concepts, start with Classification and Regression Trees and Decision Trees and Random Forests for foundational clarity and practical coding skills. Legal or family law professionals will find Risk & Rigor and Parenting Plan & Child Custody Evaluations invaluable for structured case assessments. For rapid application, combining insights from Decision Trees for Business Intelligence and Data Mining with DATA MINING WITH DECISION TREES accelerates business analytics expertise.

Alternatively, you can create a personalized Decision Tree book to bridge the gap between general principles and your specific situation. These books can help you accelerate your learning journey by connecting you with trusted knowledge tailored to your ambitions.

Frequently Asked Questions

I'm overwhelmed by choice – which book should I start with?

Start with Classification and Regression Trees if you want solid theoretical grounding, or Decision Trees and Random Forests for a beginner-friendly, hands-on approach with coding examples. These set a strong foundation before diving into specialized applications.

Are these books too advanced for someone new to Decision Tree?

Not at all. While some books like DATA MINING WITH DECISION TREES dive deep, Decision Trees and Random Forests offers a visual, beginner-friendly introduction. You can build up gradually based on your background.

What’s the best order to read these books?

Begin with foundational texts (Classification and Regression Trees, Decision Trees and Random Forests), then explore application-focused books like Risk & Rigor or Medical Conditions and Massage Therapy, depending on your field.

Do I really need to read all of these, or can I just pick one?

You can pick based on your goals. For machine learning, focus on the first two; for legal or healthcare fields, choose the relevant specialized books. Each offers distinct, valuable perspectives.

Which books focus more on theory vs. practical application?

Classification and Regression Trees leans heavily on theory, while Decision Trees and Random Forests and Decision Trees for Business Intelligence and Data Mining emphasize practical implementation and tools.

Can I get a Decision Tree book tailored to my specific needs?

Yes! While these expert books provide solid foundations, you can create a personalized Decision Tree book that aligns with your background, goals, and industry, blending expert knowledge with your unique context.

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