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Build & Evaluate Decision Trees for ML
Coursera
Course
Unknown

Build & Evaluate Decision Trees for ML

Coursera

Learn to build decision tree models using Java and evaluate them with advanced tools to understand this interpretable machine learning algorithm.

Unknown3 weeksEnglish

About this Course

Are you ready to master one of machine learning’s most powerful and interpretable algorithms? This course will guide you through the complete journey of understanding, building, and evaluating decision tree models using Java, the enterprise-standard programming language. You’ll start by exploring the core concepts, how decision trees partition data, why splitting criteria such as entropy and the Gini index matter, and when decision trees outperform other algorithms. From there, you’ll move into hands-on implementation, using industry-standard tools like Weka’s intuitive GUI and Java API along with Smile’s high-performance library to develop, tune, and deploy models. Through practical exercises, you’ll learn to configure hyperparameters, balance rapid prototyping with production-ready design, and apply robust model evaluation techniques such as confusion matrices, cross-validation, and key performance metrics. Aspiring and experienced data scientists, Java developers, and machine learning engineers seeking to build, evaluate, and interpret decision tree models for real-world applications in finance, healthcare, and business analytics. Basic Java programming experience, understanding of object-oriented concepts, and fundamental knowledge of data science principles required. By the end of the course, you’ll be equipped to detect and reduce overfitting, optimize model performance, and effectively communicate insights to technical and business stakeholders alike

What You'll Learn

  • Explain decision tree fundamentals including structure and splitting criteria
  • Build decision tree classifiers with Weka GUI, Java API, and Smile library
  • Evaluate decision tree models using confusion matrices and cross-validation

Prerequisites

  • Prior hands-on experience with core machine learning concepts
  • Comfort applying main tools or methods independently

Instructors

S

Starweaver

Global Leaders in Professional & Technology Education

T

Tom Themeles

Educator & course developer | Keynote speaker | Advocate for data and AI literacy

Topics

Machine Learning
Data Science
Data Analysis
Data Preprocessing
Decision Tree Learning
Machine Learning Algorithms
Supervised Learning
Algorithms
Applied Machine Learning
Machine Learning Software

Course Info

PlatformCoursera
LevelUnknown
PacingUnknown
PriceFree

Skills

تعلم الآلة
علوم البيانات
تحليل البيانات
معالجة البيانات
تعلم أشجار القرار
خوارزميات تعلم الآلة
التعلم الموجه
الخوارزميات
Applied Machine Learning
Machine Learning Software

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