New probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methods

The central objective of this thesis is to develop new algorithms for inference in probabilistic graphical models that improve upon the state-of-the-art and lend new insight into the computational nature of probabilistic inference. The four main technical contributions of this thesis are: 1) a new f...

Full description

Bibliographic Details
Main Author: Carbonetto, Peter
Format: Others
Language:English
Published: University of British Columbia 2009
Online Access:http://hdl.handle.net/2429/11990
id ndltd-LACETR-oai-collectionscanada.gc.ca-BVAU.-11990
record_format oai_dc
spelling ndltd-LACETR-oai-collectionscanada.gc.ca-BVAU.-119902013-06-05T04:17:45ZNew probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methodsCarbonetto, PeterThe central objective of this thesis is to develop new algorithms for inference in probabilistic graphical models that improve upon the state-of-the-art and lend new insight into the computational nature of probabilistic inference. The four main technical contributions of this thesis are: 1) a new framework for inference in probabilistic models based on stochastic approximation, variational methods and sequential Monte Carlo is proposed that achieves significant improvements in accuracy and reductions in variance over existing Monte Carlo and variational methods, and at a comparable computational expense, 2) for many instances of the proposed approach to probabilistic inference, constraints must be imposed on the parameters, so I describe a new stochastic approximation algorithm that adopts the methodology of primal-dual interior-point methods and handles constrained optimization problems much more robustly than existing approaches, 3) a new class of conditionally-specified variational approximations based on mean field theory is described, which, when combined with sequential Monte Carlo, overcome some of the limitations imposed by conventional variational mean field approximations, and 4) I show how recent advances in variational inference can be used to implement inference and learning in a novel contingently acyclic probabilistic relational model, a model developed for the purpose of making predictions about relationships in a social network.University of British Columbia2009-08-11T15:23:10Z2009-08-11T15:23:10Z20092009-08-11T15:23:10Z2009-11Electronic Thesis or Dissertation2690897 bytesapplication/pdfhttp://hdl.handle.net/2429/11990eng
collection NDLTD
language English
format Others
sources NDLTD
description The central objective of this thesis is to develop new algorithms for inference in probabilistic graphical models that improve upon the state-of-the-art and lend new insight into the computational nature of probabilistic inference. The four main technical contributions of this thesis are: 1) a new framework for inference in probabilistic models based on stochastic approximation, variational methods and sequential Monte Carlo is proposed that achieves significant improvements in accuracy and reductions in variance over existing Monte Carlo and variational methods, and at a comparable computational expense, 2) for many instances of the proposed approach to probabilistic inference, constraints must be imposed on the parameters, so I describe a new stochastic approximation algorithm that adopts the methodology of primal-dual interior-point methods and handles constrained optimization problems much more robustly than existing approaches, 3) a new class of conditionally-specified variational approximations based on mean field theory is described, which, when combined with sequential Monte Carlo, overcome some of the limitations imposed by conventional variational mean field approximations, and 4) I show how recent advances in variational inference can be used to implement inference and learning in a novel contingently acyclic probabilistic relational model, a model developed for the purpose of making predictions about relationships in a social network.
author Carbonetto, Peter
spellingShingle Carbonetto, Peter
New probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methods
author_facet Carbonetto, Peter
author_sort Carbonetto, Peter
title New probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methods
title_short New probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methods
title_full New probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methods
title_fullStr New probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methods
title_full_unstemmed New probabilistic inference algorithms that harness the strengths of variational and Monte Carlo methods
title_sort new probabilistic inference algorithms that harness the strengths of variational and monte carlo methods
publisher University of British Columbia
publishDate 2009
url http://hdl.handle.net/2429/11990
work_keys_str_mv AT carbonettopeter newprobabilisticinferencealgorithmsthatharnessthestrengthsofvariationalandmontecarlomethods
_version_ 1716587059515228160