May 31, 2025  
2023 - 2024 Traditional Undergraduate Catalog 
    
2023 - 2024 Traditional Undergraduate Catalog [ARCHIVED CATALOG] Add to Favorite (opens a new window)

DAT 330 - Data Mining


This course introduces students to data mining and its various applications. Students will gain proficiency in supervised data mining techniques for building prediction models such as decision trees, random decision forests, bootstrapping, training and testing using multi-fold cross-validation and using entropy measures for weighting features. Students will also use unsupervised data mining techniques such as clustering and association analysis. Both methods are used for discovering patterns and associations in data.
Prerequisites DAT-210
Credits: 3
ITS



Add to Favorite (opens a new window)