Sufficiently Deep Supervised Learning in High-Dimensions & Fast Prediction, with Applications

Lead Research Organisation: Brunel University London
Department Name: Mathematics

Abstract

The research is dedicated to the development of a novel method for a fast and
robust prediction of a parameter that is essential to a system such that it is
related to other random variable(s) (r.v.) that either affects the system or
being affected by the system. Here, the term, "robust" implies as reliability
which is desired within the on-going 3rd wave of the developmental stage of
Machine Learning. Let the system variable be denoted as X and the associated
observable as Y . Either, or both these r.v.s could be higher-dimensional as
well rather than being just scalars. In this Ph.D, I will learn the functional
relationship f(.) between X and Y i.e. Y = f(X) to predict the values of X at
which a (noisy) test datum on Y is observed, where the prediction will be fast
and reliable.

Publications

10 25 50

Studentship Projects

Project Reference Relationship Related To Start End Student Name
EP/V520196/1 01/10/2020 31/10/2025
2529134 Studentship EP/V520196/1 01/01/2021 31/12/2024 Gargi Roy
EP/W523902/1 01/10/2021 30/09/2026
2529134 Studentship EP/W523902/1 01/01/2021 31/12/2024 Gargi Roy