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MCMC for Hierarchical Semi-Markov Conditional Random Fields

Version 2 2024-06-03, 17:51
Version 1 2015-07-27, 11:48
conference contribution
posted on 2024-06-03, 17:51 authored by Truyen TranTruyen Tran, QD Phung, Svetha VenkateshSvetha Venkatesh, HH Bui
Deep architecture such as hierarchical semi-Markov models is an important class of models for nested sequential data. Current exact inference schemes either cost cubic time in sequence length, or exponential time in model depth. These costs are prohibitive for large-scale problems with arbitrary length and depth. In this contribution, we propose a new approximation technique that may have the potential to achieve sub-cubic time complexity in length and linear time depth, at the cost of some loss of quality. The idea is based on two well-known methods: Gibbs sampling and Rao-Blackwellisation. We provide some simulation-based evaluation of the quality of the RGBS with respect to run time and sequence length.

History

Pagination

1-8

Location

Whistler, BC, Canada

Start date

2009-12-12

End date

2009-12-12

Language

eng

Publication classification

E Conference publication, E2.1 Full written paper - non-refereed / Abstract reviewed

Title of proceedings

NIPS'09 : Proceedings of the 2009 Deep Learning for Speech Recognition and Related Applications

Event

Deep Learning for Speech Recognition and Related Applications. Workshop (2009 : Whistler, British Colombia)

Publisher

[The Workshop]

Place of publication

[Whistler, British Colombia]

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