Predictive Data Mining
Objectives
This curricular unit has as primary goal to allow students to gain a fundamental understanding of Predictive Analytics. This course will cover the basics of predictive analytics and modeling data to determine which algorithms to use. Understand the similarities and differences and which options affect the models most. Topics covered include predictive analytics algorithms for supervised learning, including decision trees, neural networks, k-nearest neighbor, support vector machines, and model ensembles. At the end of the course, participants will be able to use these skills to produce a fully processed data set compatible with building robust predictive models that can be deployed to increase profitability.
General characterization
Code
400072
Credits
6.0
Responsible teacher
Roberto André Pereira Henriques
Hours
Weekly - Available soon
Total - Available soon
Teaching language
Portuguese. If there are Erasmus students, classes will be taught in English
Prerequisites
None
Bibliography
NA
Teaching method
NA
Evaluation method
NA
Subject matter
NA
Programs
Programs where the course is taught: