Project Details
Description
The aim of this project is to develop declarative machine learning techniques that exploit inherent structureand models of the world. Deep learning has become the dominant approach for machine learning with many products and promises built on this technology. But deep learning is expensive, opaque, brittle and relies solely on human labelled data. This project intends to make deep learning more reliable by establishing theory and algorithms that allow physical and mathematical models to be embedded within a deep learning framework, providing performance guarantees and interpretability. This would likely benefit machine learning based products that can understand the world and interact with humans naturally through vision and language.
Status | Active |
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Effective start/end date | 1/04/21 → 31/03/25 |
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