
Learning with the Online EM Algorithm (Olivier Cappé)
The Online Expectation-Maximization (EM) is a generic algorithm that can be used to estimate the parameters of latent data models incrementally from large volumes of data. The general principle of the approach is to use a stochastic approximation scheme, in the domain of sufficient statistics, as a proxy for a limiting, deterministic, population version of the EM recursion. In this talk, I will briefly review the convergence properties of the method and discuss some applications and extensions of the basic approach.
Informationen
- Sendung
- Veröffentlicht16. Mai 2013 um 22:00 UTC
- Länge1 Std. 7 Min.
- BewertungUnbedenklich