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Presentation
Presentation
Following Fundamentals of Statistics for Data Science and Applied Programming for Data Science courses, this course aims to introduce the concepts of supervised machine learning. The introduction of the concepts of regression and classification allows the student to identify the type of problem to be addressed. This allows students to acquire skills to analyze problems and define strategies to deal with it. The student will be able to identify possible approaches, among different possibilities of modeling the problem, and decide on the best solution for a given set of data.
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Class from course
Class from course
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Degree | Semesters | ECTS
Degree | Semesters | ECTS
Master Degree | Semestral | 7
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Year | Nature | Language
Year | Nature | Language
2 | Mandatory | Português
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Code
Code
ULHT6347-24297
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Prerequisites and corequisites
Prerequisites and corequisites
Not applicable
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Professional Internship
Professional Internship
Não
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Syllabus
Syllabus
PC1. Data Preprocessing PC2. Classification: K-NN, SVM, Kernel SVM, Naive Bayes PC3. Clustering: K-Means, Hierarchical Clustering PC4. Dimensionality Reduction PC5. Model Selection & Boosting: k-fold Cross Validation, Parameter Tuning, Grid Search, XGBoost
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Objectives
Objectives
LG1. The ability of organization and planning, the ability of analysis and synthesis, the ability to solve problems and make decisions, the ability to work in a team, the ability to put in practice the theoretical knowledge acquired and the ability to develop new ideas. LG2. Regarding the technical component, at the end of the course, the student should be able to discuss the main topics and concepts, such as: Master Machine Learning on Python Have an overview of many Machine Learning models Make accurate predictions and powerful analysis Make robust Machine Learning models Create strong added value to your business using Machine Learning Introduce specific topics like Reinforcement Learning and Deep Learning Handle advanced techniques like Dimensionality Reduction Build several Machine Learning models and understand how to combine them to solve a problem.
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Teaching methodologies and assessment
Teaching methodologies and assessment
This information will be updated soon.
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References
References
T. Mitchell. Machine Learning, McGraw-Hill, 1997 C. M. Bishop. Pattern Recognition and Machine Learning, Springer, 2006.
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Office Hours
Office Hours
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Mobility
Mobility
No