Kursplan för

Graphical Models, Bayesian Learning, and Statistical Relational Learning
Grafiska modeller, Bayesiansk inlärning och statistisk sambandsbaserad inlärning

EDA055F, 6 högskolepoäng

Gäller från och med: Autumn 2019
Beslutad av: Professor Thomas Johansson
Datum för fastställande: 2019-10-08

Allmänna uppgifter

Avdelning: Computer Science (LTH)
Kurstyp: Ren forskarutbildningskurs
Undervisningsspråk: English

Syfte

Graphical Models, Bayesian Learning and Statistical Relational Learning is a core course within the Wallenberg AI, Autonomous Systems and Software Program (WASP), more specifically within the the WASP-AI Graduate School track. The purpose of the course is to give a deepened understanding of the type of models and machine learning methods mentioned in the course title. These are different from, e.g., deep learning or reinforcement learning approaches to a degree, that motivates a respective specific course to broaden the participants' knowledge within the general core topic of machine learning within WASP-AI.

Mål

Kunskap och förståelse

För godkänd kurs skall doktoranden

Färdighet och förmåga

För godkänd kurs skall doktoranden

Värderingsförmåga och förhållningssätt

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Kursinnehåll

The course is structured in three modules, dealing with graphical models, algorithms for doing inference in and learning of them, and the combination of logical and probabilistic approaches to reasoning. Topics to be discussed include probabilistic graphical models, causal models, interventional distributions and structural learning algorithms (module 1); Markov chain Monte Carlo, approximate message-passing, and variational inference, with a particular emphasis on inference in probabilistic graphical models (module 2); Generalized syntax and semantics of propositional and (especially) predicate logic, as well as major results about algorithmic decidability and efficiency for logical formalisms (module 3).

Kurslitteratur

Lecture material (slides, articles, and literature recommendations) and hand-in assignments are distributed via the course homepage or the used and announced course content management system respectively.

Kursens undervisningsformer

Undervisningsformer: Föreläsningar, laborationer, övningar, litteraturkurs som självstudier, övrigt. Each of the course modules is designed individually, containing some combination out of lectures, exercises, practical exercises, study material / reading advise, and homework assignments . A module consists of a two-day physical meeting with lectures and some form of exercises, as well as some homework assignments that the students can work on prior / after the meeting.

Kursens examination

Examinationsformer: Inlämningsuppgifter, övrigt. The examination criteria aside the active participation in the physical meeting for each module are set by the teachers responsible for the respective module and communicated prior to or at the physical meeting for the module.
Betygsskala: Underkänd, godkänd
Examinator: Senior lecturer Elin A. Topp

Antagningsuppgifter

Förutsatta förkunskaper: Specific assumed prior knowledge is communicated through the course website per module, which is available well in advance. Generally the course requires at least some knowledge in probabilistic representation and reasoning, graphical models, and first order logic. Students are expected to have a background in Computer Science, Mathematics, Engineering Physics, Electrical Engineering or a closely related topic.

Kurstillfällesinformation

Startdatum: 2019-09-01. Startdatumet är ungefärligt.
Slutdatum: 2020-01-15
Kursfart: Full time

Anmälningsinformation

e-mail your indication of interest to course responsible

Kontaktinformation och övrigt

Kursansvarig: Elin A. Topp <elin_a.topp@cs.lth.se>
Hemsida: http://wasp-sweden.org/graphical-models-bayesian-learning-and-statistical-relational-learning-6-credits/
Övrig information: The course instance is only open to graduate students connected to WASP


Fullständig visning