Streaming variational inference for dirichlet process mixtures


Autoria(s): Huynh, Viet; Phung, Dinh; Venkatesh, Svetha
Contribuinte(s)

Holmes, G

Liu, TY

Data(s)

01/01/2016

Resumo

Bayesian nonparametric models are theoretically suitable to learn streaming data due to their complexity relaxation to the volume of observed data. However, most of the existing variational inference algorithms are not applicable to streaming applications since they re-quire truncation on variational distributions. In this paper, we present two truncation-free variational algorithms, one for mix-membership inference called TFVB (truncation-free variational Bayes), and the other for hard clustering inference called TFME (truncation-free maximization expectation). With these algorithms, we further developed a streaming learning framework for the popular Dirichlet process mixture (DPM) models. Our ex-periments demonstrate the usefulness of our framework in both synthetic and real-world data.

Identificador

http://hdl.handle.net/10536/DRO/DU:30081949

Idioma(s)

eng

Publicador

JMLR

Relação

http://dro.deakin.edu.au/eserv/DU:30081949/huynh-streamingvariational-2016.pdf

http://dro.deakin.edu.au/eserv/DU:30081949/huynh-streamingvariational-evid-2016.pdf

http://jmlr.csail.mit.edu/proceedings/

Direitos

2016, JMLR

Tipo

Conference Paper