October 6, Wednesday
12:00 – 13:30
Irregular-Time Bayesian Networks
Graduate seminar
Lecturer : Michael Ramati
Affiliation : Information Systems Engineering, BGU
Location : 202/37
Host : Graduate Seminar
In many fields observations are performed irregularly along time, due to either measurement limitations or lack of a constant immanent rate.
While discrete-time Markov models (as Dynamic Bayesian Networks) introduce either inefficient computation or an information loss to reasoning about such processes,
continuous-time Markov models assume either a discrete state space (as Continuous-Time Bayesian Networks), or a flat continuous state space (as stochastic differential equations).
To address these problems, we present a new modeling class called Irregular-Time Bayesian Networks (ITBNs), generalizing Dynamic Bayesian Networks,
allowing substantially more compact representations, and increasing the expressively of the temporal dynamics.
In addition, a globally optimal solution is guaranteed when learning temporal systems, provided that they are fully observed at the same irregularly spaced time-points,
and a semiparametric subclass of ITBNs is introduced to allow further adaptation to the irregular nature of the available data.