Advancements in Variational Bayesian Computation: Theory and Applications in Hybrid and Particle-based Methods
Access status:
Open Access
Type
ThesisThesis type
Doctor of PhilosophyAuthor/s
Tseng, Yu-HsiuAbstract
This thesis advances Variational Bayesian inference methods to address challenges in statistical models with complex structures, intractable likelihoods, and high-dimensional settings. Traditional Variational Bayes (VB) techniques often fall short when dealing with models involving ...
See moreThis thesis advances Variational Bayesian inference methods to address challenges in statistical models with complex structures, intractable likelihoods, and high-dimensional settings. Traditional Variational Bayes (VB) techniques often fall short when dealing with models involving numerous nuisance parameters or requiring restrictive parametric assumptions. To overcome these limitations, we introduce the Hybrid Variational Bayes (HVB) framework, which employs a hybrid variational structure between parameters of interest and nuisance parameters. HVB enhances inference accuracy in models like the Bayesian Lasso and state-space models by better capturing parameter relationships. We also develop Particle Mean-Field Variational Bayes (PMFVB), a novel particle-based methodology that updates particle positions using Langevin diffusion processes. PMFVB converges toward the optimal variational density without relying on mutual independence among latent variables or restrictive parametric assumptions. This approach broadens the applicability of VB and enhances accuracy, validated through theoretical analysis and applications in Bayesian deep learning models. Additionally, we explore Particle Flow Variational Inference (PFVI), inspired by the Wasserstein gradient flow. While traditional particle flow methods face practical issues due to intractable optimal maps in the Jordan–Kinderlehrer–Otto (JKO) scheme, we provide a state-of-the-art convergence analysis of PFVI algorithms under the Logarithmic Sobolev inequality. This work addresses existing challenges and offers practical solutions for Bayesian computation. Overall, this thesis contributes to the field by developing advanced variational inference frameworks that enhance computational efficiency and accuracy in complex Bayesian models, expanding the tools available for statistical analysis in high-dimensional and intricate settings.
See less
See moreThis thesis advances Variational Bayesian inference methods to address challenges in statistical models with complex structures, intractable likelihoods, and high-dimensional settings. Traditional Variational Bayes (VB) techniques often fall short when dealing with models involving numerous nuisance parameters or requiring restrictive parametric assumptions. To overcome these limitations, we introduce the Hybrid Variational Bayes (HVB) framework, which employs a hybrid variational structure between parameters of interest and nuisance parameters. HVB enhances inference accuracy in models like the Bayesian Lasso and state-space models by better capturing parameter relationships. We also develop Particle Mean-Field Variational Bayes (PMFVB), a novel particle-based methodology that updates particle positions using Langevin diffusion processes. PMFVB converges toward the optimal variational density without relying on mutual independence among latent variables or restrictive parametric assumptions. This approach broadens the applicability of VB and enhances accuracy, validated through theoretical analysis and applications in Bayesian deep learning models. Additionally, we explore Particle Flow Variational Inference (PFVI), inspired by the Wasserstein gradient flow. While traditional particle flow methods face practical issues due to intractable optimal maps in the Jordan–Kinderlehrer–Otto (JKO) scheme, we provide a state-of-the-art convergence analysis of PFVI algorithms under the Logarithmic Sobolev inequality. This work addresses existing challenges and offers practical solutions for Bayesian computation. Overall, this thesis contributes to the field by developing advanced variational inference frameworks that enhance computational efficiency and accuracy in complex Bayesian models, expanding the tools available for statistical analysis in high-dimensional and intricate settings.
See less
Date
2024Rights statement
The author retains copyright of this thesis. It may only be used for the purposes of research and study. It must not be used for any other purposes and may not be transmitted or shared with others without prior permission.Faculty/School
Faculty of Engineering, School of Computer ScienceAwarding institution
The University of SydneyShare