Adaptive, Robust and Scalable Bayesian Filtering for Online Learning
In this thesis, we introduce Bayesian filtering as a principled framework for tackling diverse sequential machine learning problems, including online (continual) learning, pre-quential (one-step-ahead) forecasting, and contextual bandits. To this end, this thesis addresses key challenges in applying Bayesian filtering to these problems: adaptivity to non-stationary environments, robustness to model misspecification and outliers, and scalability to the high-dimensional parameter space of deep neural networks. We develop novel tools within the Bayesian filtering framework to address each of these challenges, including: (i) a modular framework that enables the development adaptive approaches for online learning; (ii) a novel, provably robust filter with similar computational cost to standard filters, that employs Generalised Bayes; and (iii) a set of tools for sequentially updating model parameters using approximate second-order optimisation methods that exploit the overparametrisation of high-dimensional parametric models such as neural networks. Theoretical analysis and empirical results demonstrate the improved performance of our methods in dynamic, high-dimensional, and misspecified models.
May-13-2025
- Country:
- North America > United States
- Massachusetts (0.04)
- Europe
- Spain (0.04)
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- Germany > Brandenburg
- Potsdam (0.04)
- France > Hauts-de-France
- Asia > Middle East
- Jordan (0.04)
- North America > United States
- Genre:
- Overview (1.00)
- Instructional Material (1.00)
- Research Report > New Finding (0.87)
- Industry:
- Banking & Finance > Trading (1.00)
- Education > Educational Setting
- Online (1.00)
- Technology: