Course Description
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Course Name
Machine Learning for Econometrics and Data Science
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Host University
Vrije Universiteit Amsterdam
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Location
Amsterdam, The Netherlands
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Area of Study
Mathematics
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Language Level
Taught In English
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Prerequisites
Linear Algebra, Probability, Statistics, Econometrics
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ECTS Credits
6 -
Recommended U.S. Semester Credits3
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Recommended U.S. Quarter Units4
Hours & Credits
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Overview
COURSE OBJECTIVE
The aim is to explore, study, and develop quantitative learning systems, methods, and algorithms with the purpose to improve the performance with learning from large data sets using powerful computers.COURSE CONTENT
Machine learning originates from computer science and statistics with the goal of exploring, studying, and developing learning systems,
methods, and algorithms that can improve their performance with learning from data. This course is designed to provide students an introduction to the main foundations of machine learning. We adopt principles from probability (Bayes rule, conditioning, expectations, independence), linear algebra (vector and matrix operations, eigenvectors, SVD), and calculus (gradients, Jacobians) to propose a formal analysis of the performance of machine learning algorithms. Focusing on the supervised learning framework, we formalise the problem
of learning to predict based on examples. We introduce the notions of predictor, generalisation risk, Bayes risk and target function,
empirical error, model and empirical risk minimisation, learning rules, approximation and estimation errors decomposition, and derive learning guarantees under different classification and regression frameworks. We relate these notions to machine learning principles such as model selection, over-fitting, and under-fitting, and techniques such as cross-validation and regularization. In case work we implement learning algorithms and interpret the results.TEACHING METHODS
Lectures (4 hours, each week) and Tutorials (2 hours, each week)TYPE OF ASSESSMENT
Written exam plus an assignment
Course Disclaimer
Courses and course hours of instruction are subject to change.
Some courses may require additional fees.