Probabilistic Models

582636
5
Algoritmit ja koneoppiminen
Syventävät opinnot
This course provides an introduction to probabilistic modeling from a computer scientist"s perspective. Many of the research issues in Artificial Intelligence, Computational Intelligence and Machine Learning/Data Mining can be viewed as topics in the "science of uncertainty," which addresses the problem of optimal processing of incomplete information, i.e., plausible inference, and this course shows how the probabilistic modeling framework forms a theoretically elegant and practically useful solution to this problem. The course focuses on the "degree-of-belief" interpretation of probability and illustrates the use of Bayes" Theorem as a general rule of belief-updating. As a concrete example of methodological tools based on this approach, we will study probabilistic graphical models focusing in particular on (discrete) Bayesian networks, and on their applications in different probabilistic modeling tasks.

Koe

07.03.2016 16.00 B123
Vuosi Lukukausi Päivämäärä Periodi Kieli Vastuuhenkilö
2016 kevät 19.01-03.03. 3-3 Englanti Antti Hyttinen

Luennot

Aika Huone Luennoija Päivämäärä
Ti 16-18 B222 Antti Hyttinen 19.01.2016-03.03.2016
To 16-18 B222 Antti Hyttinen 19.01.2016-03.03.2016

Harjoitusryhmät

Group: 1
Aika Huone Ohjaaja Päivämäärä Huomioitavaa
Ke 16-18 B222 Janne Leppä-aho 25.01.2016—04.03.2016

Yleistä

All material will be available in Moodle: https://moodle.helsinki.fi/course/view.php?id=18640.