Skip to menu Skip to content Skip to footer

A Novel Approach to Semi-Supervised Statistical Machine Learning (2023-2026)

Abstract

Recent successes in the construction of classifiers for making diagnoses and predictions are due in part to their using much data labelled with respect to their class of origin. But typically there are little labelled data but plentiful unlabelled data. The goal of semi-supervised learning (SSL) is to leverage large amounts of unlabelled data to improve the performance using only small labelled datasets and so SSL is of paramount importance to applications where it is expensive or impractical to obtain much labelled data. The project is to develop a novel SSL approach that adopts a missingness mechanism for the missing labels to build a classifier that not only improves accuracy but it can be greater than if the missing labels were known.

Experts

Professor Geoffrey McLachlan

Professor
School of Mathematics and Physics
Faculty of Science
Geoffrey McLachlan
Geoffrey McLachlan

Dr Sharon Lee

Senior Lecturer
School of Mathematics and Physics
Faculty of Science
Sharon Lee
Sharon Lee