Online Methods for Complex Stochastic Optimization Problems

Lead Research Organisation: University of Bristol
Department Name: Mathematics

Abstract

My research primarily consists of examining the class of adaptive stepsize algorithms in the context of stochastic optimisation. In recent years, such algorithms have been an integral component to the success of the field of deep learning, allowing previously impractical neural architectures to be trained on huge swathes of data. Adaptive stepsize algorithms for stochastic optimisation extend stochastic gradient descent, a technique for fitting classes of statistical and ML models, to be more robust and efficient by utilising additional data whilst training. Until recently, however, relatively little was known about the practical performance of these adaptive stepsize algorithms with many important properties, such as stability and probabilistic convergence, being undetermined. Recent work has been undertaken to try and isolate these properties and the conditions in which they hold - The research I am undertaking will aim to widen the conditions in which we know that these properties hold, looking toward weakening the assumptions in the standard setting (also strengthening the properties themselves), and also looking at how the algorithms behave in condition of dependent data, mostly focusing on markovian dynamics. This work will facilitate increased confidence in the performance of adaptive step size algorithms which will become increasingly more important given the growing prevalence of machine learning techniques using them being relied upon in critical infrastructure. This work will also increase the range of settings in which adaptive stepsize algorithms can be applied such as training reinforcement learning algorithms which often entail Markovian conditions.

Planned Impact

The COMPASS Centre for Doctoral Training will have the following impact.

Doctoral Students Impact.

I1. Recruit and train over 55 students and provide them with a broad and comprehensive education in contemporary Computational Statistics & Data Science, leading to the award of a PhD. The training environment will be built around a set of multilevel cohorts: a variety of group sizes, within and across year cohort activities, within and across disciplinary boundaries with internal and external partners, where statistics and computation are the common focus, but remaining sensitive to disciplinary needs. Our novel doctoral training environment will powerfully impact on students, opening their eyes to not only a range of modern technical benefits and opportunities, but on the power of team-working with people from a range of backgrounds to solve the most important problems of the day. They will learn to apply their skills to achieve impact by collaborative working with internal and external partners, such as via our Rapid Response Teams, Policy Workshops & Statistical Clinics.

I2. As well as advanced training in computational statistics and data science, our students will be impacted by exposure to, and training in, important cognate topics such as ethics, responsible innovation, equality, diversity and inclusion, policy, effective communication and dissemination, enterprise, impact and consultancy skills. It is vital for our students to understand that their training will enable them to have a powerful impact on the wider world, so, e.g., AI algorithms they develop should not be discriminatory, and statistical methodologies should be reproducible, and statistical results accurately and comprehensibly communicated to the general public and policymakers.

I3. The students will gain experience via collaborations with academic partners within the University in cognate disciplines, and a wide range of external industrial & government partners. The students will be impacted by the structured training programmes of the UK Academy of Postgraduate Training in Statistics, the Bristol Doctoral College, the Jean Golding Institute, the Alan Turing Institute and the Heilbronn Institute for Mathematical Sciences, which will be integrated into our programme.

I4. Having received an excellent training, the students will then impact powerfully on the world in their future fruitful careers, spreading excellence.

Impact on our Partners & ourselves.

I5. Direct impacts will be achieved by students engaging with, and working on projects with, our academic partners, with discipline-specific problems arising in engineering, education, medicine, economics, earth sciences, life sciences and geographical sciences, and our external partners Adarga, the Atomic Weapons Establishment, CheckRisk, EDF, GCHQ, GSK, the Office for National Statistics, Sciex, Shell UK, Trainline and the UK Space Agency. The students will demonstrate a wide range of innovation with these partners, will attract engagement from new partners, and often provide attractive future employment matches for students and partners alike.

Wider Societal Impact

I6. COMPASS will greatly benefit the UK by providing over 55 highly trained PhD graduates in an area that is known to be suffering from extreme, well-known, shortages in the people pipeline nationally. COMPASS CDT graduates will be equipped for jobs in sectors of high economic value and national priority, including data science, analytics, pharmaceuticals, security, energy, communications, government, and indeed all research labs that deal with data. Through their training, they will enable these organisations to make well-informed and statistically principled decisions that will allow them to maximise their international competitiveness and contribution to societal well-being. COMPASS will also impact positively on the wider student community, both now and sustainably into the future.

Publications

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Studentship Projects

Project Reference Relationship Related To Start End Student Name
EP/S023569/1 01/04/2019 30/09/2027
2585444 Studentship EP/S023569/1 01/10/2019 22/03/2024 Alessio Zakaria