This comprehensive course teaches students to build machine learning models using Java, with focused emphasis on entropy as the mathematical foundation for intelligent decision-making algorithms. Students implement entropy calculations from scratch, learning how information gain drives optimal splitting decisions in classification algorithms.

Cela se termine bientôt : Obtenez des compétences de niveau supérieur avec Coursera Plus pour 199 $ (régulièrement 399 $). Économisez maintenant.

Build Robust Java ML Models with Entropy
Ce cours fait partie de Spécialisation Level Up: Java-Powered Machine Learning


Instructeurs : Starweaver
Inclus avec
Expérience recommandée
Ce que vous apprendrez
Calculate entropy and information gain in Java to identify the most informative attributes in a dataset.
Implement and evaluate a complete ID3 decision tree classifier using proper train-test methodology and performance metrics.
Build random forest ensembles, handle real-world data challenges, and deploy ML models with persistent storage and user interfaces.
Compétences que vous acquerrez
- Catégorie : Applied Machine Learning
- Catégorie : Algorithms
- Catégorie : Classification Algorithms
- Catégorie : Decision Tree Learning
- Catégorie : Feature Engineering
- Catégorie : Model Deployment
- Catégorie : Predictive Modeling
- Catégorie : Program Evaluation
- Catégorie : Data Preprocessing
- Catégorie : Model Evaluation
- Catégorie : Java
- Catégorie : Machine Learning
- Catégorie : Business Development
- Catégorie : Program Implementation
- Catégorie : Random Forest Algorithm
Détails à connaître

Ajouter à votre profil LinkedIn
janvier 2026
1 devoir
Découvrez comment les employés des entreprises prestigieuses maîtrisent des compétences recherchées

Élaborez votre expertise du sujet
- Apprenez de nouveaux concepts auprès d'experts du secteur
- Acquérez une compréhension de base d'un sujet ou d'un outil
- Développez des compétences professionnelles avec des projets pratiques
- Obtenez un certificat professionnel partageable

Il y a 3 modules dans ce cours
This foundational module introduces students to machine learning using Java and establishes the mathematical principles that power intelligent decision-making algorithms. Students learn why entropy matters as a measure of uncertainty and information, exploring how information gain quantifies the value of asking specific questions about data. Through hands-on coding, students set up their Java ML development environment, implement entropy calculations from scratch, and build the core logic for selecting optimal data splits—creating a working entropy calculator that identifies which attributes in a dataset provide the most useful information. By the end of this module, students understand both the theoretical foundations of entropy-based learning and have practical experience translating mathematical concepts into Java code, setting the stage for building complete decision tree classifiers.
Inclus
4 vidéos2 lectures1 évaluation par les pairs
This module bridges theory and practice by guiding students through building a complete decision tree classifier from scratch using the ID3 algorithm. Students learn how ID3 uses entropy and information gain to make intelligent splitting decisions, implement the full recursive tree construction process including handling leaf nodes and preventing overfitting, and master essential model evaluation techniques using training/testing splits, confusion matrices, and cross-validation. The hands-on lab challenges students to implement their own ID3 decision tree classifier without relying on libraries, train it on a real-world dataset like Iris or mushroom classification, and evaluate its performance with professional metrics—giving them both a working classifier and deep understanding of what happens "under the hood" of any decision tree library they'll use in the future.
Inclus
3 vidéos1 lecture1 évaluation par les pairs
This module transforms students' decision tree knowledge into production-ready machine learning systems by tackling real-world data challenges and advanced ensemble techniques. Students learn to handle continuous numerical attributes through entropy-based discretization, implement strategies for dealing with missing data, and build random forest classifiers that combine multiple trees to dramatically improve accuracy and robustness through bootstrap aggregating and feature randomness. The module culminates in practical deployment skills including model serialization for persistence, creating user-friendly interfaces for predictions, and applying complete ML pipelines to real-world problems like credit risk assessment or customer churn prediction. By the end, students have built a deployable ML application with a command-line interface, compared single trees versus ensemble performance, and gained the skills to integrate machine learning models into production Java applications.
Inclus
4 vidéos1 lecture1 devoir2 évaluations par les pairs
Obtenez un certificat professionnel
Ajoutez ce titre à votre profil LinkedIn, à votre curriculum vitae ou à votre CV. Partagez-le sur les médias sociaux et dans votre évaluation des performances.
Offert par
En savoir plus sur Machine Learning
Statut : Essai gratuit
Statut : Essai gratuitBoard Infinity
Statut : Essai gratuitBoard Infinity
Statut : Essai gratuitBoard Infinity
Pour quelles raisons les étudiants sur Coursera nous choisissent-ils pour leur carrière ?




Foire Aux Questions
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.
Plus de questions
Aide financière disponible,




