Wray enjoys playing with web/text data, writing code, and devising Bayesian algorithms. He used to support some of his work on Github (wbuntine). His research interests include theoretical and applied work in document and text analysis, machine learning, and probabilistic methods including: discrete non-parametric and Bayesian statistics with applications to machine learning and deep learning, latent variables in semi-structured and text analysis, and applications in medical and health informatics. His latest work is using these techniques to develop methods for improved personalised information access.
Supervisor's projects
Project name Sort descending | Type |
---|---|
A multi-label learning classifier on text data | Honours project |
Active learning for a text classifier using small data | Honours project |
Dealing with publication information overload | Research project |
Co-supervising
Project name Sort descending | Type | Primary supervisor |
---|---|---|
Anomaly detection in evolving (dynamic) graphs | Research project | Mahsa Salehi |
Characterising Model Complexity for Data-driven Scientific Discovery | Research project | Daniel Schmidt |
Converting Medical Guidelines into Knowledge Graph | Honours project | Ehsan Shareghi |
Human-in-loop machine learning | Research project | Lan Du |