Ensimag Rubrique Formation 2022

Probabilistic models for learning - 4MMMPA

  • Number of hours

    • Lectures 16.5
    • Tutorials 16.5

    ECTS

    ECTS 2.5

Goal(s)

The objective of the course is to provide students with basic knowledge and skill in probabilistic models for statistical and machine learning applications. Teaching focuses on concepts of statistical dependence and algorithms for analysis complex and structured data, with a Bayesian perspective. Teaching language is french.

Contact Olivier FRANCOIS

Content(s)

The first part of the course deals with concepts of statistical dependence statistique, covariance, Gaussian vectors and linear regression models(6 weeks). The second part of the course presents an introduction to Bayesian data analysis and to Bayesian algorithms such as Markov chain Monte-Carlo methods (6 weeks). Applications to classification using mixture models are studied.



Prerequisites

Basics in probability theory and statistics.

Test

Written exam and homework.



E1 = 0.7 * N1 + 0.3 * TP
E2 = N2
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Additional Information

Curriculum->MMIS.->Semester 3
Curriculum->ISSC->Semester 3