skip to content

MRC Biostatistics Unit

Speaker: Gerado Duran-Martin, Oxford-Man Institute, University of Oxford 

Abstract: We propose a unifying framework for methods that perform probabilistic online learning in non-stationary environments. We call the framework BONE, which stands for generalised (B)ayesian (O)nline learning in (N)on-stationary (E)nvironments. BONE provides a common structure to tackle a variety of problems, including online continual learning, prequential forecasting, and contextual bandits. The framework requires specifying three modelling choices: (i) a model for measurements (e.g., a neural network), (ii) an auxiliary process to model non-stationarity (e.g., the time since the last changepoint), and (iii) a conditional prior over model parameters (e.g., a multivariate Gaussian). The framework also requires two algorithmic choices, which we use to carry out approximate inference under this framework: (i) an algorithm to estimate beliefs (posterior distribution) about the model parameters given the auxiliary variable, and (ii) an algorithm to estimate beliefs about the auxiliary variable. We show how the modularity of our framework allows for many existing methods to be reinterpreted as instances of BONE, and it allows us to propose new methods. We compare experimentally existing methods with our proposed new method on several datasets, providing insights into the situations that make each method more suitable for a specific task.


This will be a free hybrid seminar. If you would like to join remotely, please register via Zoom: https://cam-ac-uk.zoom.us/meeting/register/W8Gl6_hoQ7mUob4Rh8miIA

Date: 
Tuesday, 7 April, 2026 - 14:00 to 15:00
Event location: 
East Forvie Building, Forvie Site, Robinson Way, Cambridge CB2 0SR