Developing new tools in community detection and graph-based signal analysis
Lead Research Organisation:
University of Bath
Department Name: Mathematical Sciences
Abstract
In many settings, data naturally arise as connections between individual nodes in a graph (for example, friendship or collaboration networks in social media). Alternatively, data arising in other spaces (such as images) can be coerced into a graph-like structure for analysis, the suggested advantage being that one can unlock alternative information such as dependency structure not obvious in the original domain, or that network sparsity can be exploited for simpler analysis.
The literature for modelling and analysing networks is now well-established via both of the approaches described above. However, there are still open questions in this research area which need to be addressed. For example, how can we build nodal or edge membership constraints into network-related analysis? Can transformation methods currently employed in analysing data arising on a graph (such as wavelets) be exploited for the analysis of static and dynamic networks? Could this result in more efficient tools, such as change-point techniques or online settings? Are there more robust ways of parameter estimation in the presence of missing data in statistical models for networks and their characterisation?
The aim of this project is to present a range of potential problems arising in the general area of decision-making for network data. Specifically, we want to consider problems where there is a lack of, or unsatisfactory, methodological development of practical interest.
The literature for modelling and analysing networks is now well-established via both of the approaches described above. However, there are still open questions in this research area which need to be addressed. For example, how can we build nodal or edge membership constraints into network-related analysis? Can transformation methods currently employed in analysing data arising on a graph (such as wavelets) be exploited for the analysis of static and dynamic networks? Could this result in more efficient tools, such as change-point techniques or online settings? Are there more robust ways of parameter estimation in the presence of missing data in statistical models for networks and their characterisation?
The aim of this project is to present a range of potential problems arising in the general area of decision-making for network data. Specifically, we want to consider problems where there is a lack of, or unsatisfactory, methodological development of practical interest.
Planned Impact
Combining specialised modelling techniques with complex data analysis in order to deliver prediction with quantified uncertainties lies at the heart of many of the major challenges facing UK industry and society over the next decades. Indeed, the recent Government Office for Science report "Computational Modelling, Technological Futures, 2018" specifies putting the UK at the forefront of the data revolution as one of their Grand Challenges.
The beneficiaries of our research portfolio will include a wide range of UK industrial sectors such as the pharmaceutical industry, risk consultancy, telecommunications and advanced materials, as well as government bodies, including the NHS, the Met Office and the Environment Agency.
Examples of current impactful projects pursued by students and in collaboration with stake-holders include:
- Using machine learning techniques to develop automated assessment of psoriatic arthritis from hand X-Rays, freeing up consultants' time (with the NHS).
- Uncertainty quantification for the Neutron Transport Equation improving nuclear reactor safety (co-funded by Wood).
- Optimising the resilience and self-configuration of communication networks with the help of random graph colouring problems (co-funded by BT).
- Risk quantification of failure cascades on oil platforms by using Bayesian networks to improve safety assessment for certification (co-funded by DNV-GL).
- Krylov regularisation in a Bayesian framework for low-resolution Nuclear Magnetic Resonance to assess properties of porous media for real-time exploration (co-funded by Schlumberger).
- Machine learning methods to untangle oceanographic sound data for a variety of goals in including the protection of wildlife in shipping lanes (with the Department of Physics).
Future committed partners for SAMBa 2.0 are: BT, Syngenta, Schlumberger, DNV GL, Wood, ONS, AstraZeneca, Roche, Diamond Light Source, GKN, NHS, NPL, Environment Agency, Novartis, Cytel, Mango, Moogsoft, Willis Towers Watson.
SAMBa's core mission is to train the next generation of academic and industrial researchers with the breadth and depth of skills necessary to address these challenges. SAMBa's most sustained impact will be through the contributions these researchers make over the longer term of their careers. To set the students up with the skills needed to maximise this impact, SAMBa has developed a bespoke training experience in collaboration with industry, at the heart of its activities. Integrative Think Tanks (ITTs) are week-long workshops in which industrial partners present high-level research challenges to students and academics. All participants work collaboratively to formulate mathematical
models and questions that address the challenges. These outputs are meaningful both to the non-academic partner, and as a mechanism for identifying mathematical topics which are suitable for PhD research. Through the co-ownership of collaboratively developed projects, SAMBa has the capacity to lead industry in capitalising on recent advances in mathematics. ITTs occur twice a year and excel in the process of problem distillation and formulation, resulting in an exemplary environment for developing impactful projects.
SAMBa's impact on the student experience will be profound, with training in a broad range of mathematical areas, in team working, in academic-industrial collaborations, and in developing skills in communicating with specialist and generalist audiences about their research. Experience with current SAMBa students has proven that these skills are highly prized: "The SAMBa approach was a great template for setting up a productive, creative and collaborative atmosphere. The commitment of the students in getting involved with unfamiliar areas of research and applying their experience towards producing solutions was very impressive." - Dr Mike Marsh, Space weather researcher, Met Office.
The beneficiaries of our research portfolio will include a wide range of UK industrial sectors such as the pharmaceutical industry, risk consultancy, telecommunications and advanced materials, as well as government bodies, including the NHS, the Met Office and the Environment Agency.
Examples of current impactful projects pursued by students and in collaboration with stake-holders include:
- Using machine learning techniques to develop automated assessment of psoriatic arthritis from hand X-Rays, freeing up consultants' time (with the NHS).
- Uncertainty quantification for the Neutron Transport Equation improving nuclear reactor safety (co-funded by Wood).
- Optimising the resilience and self-configuration of communication networks with the help of random graph colouring problems (co-funded by BT).
- Risk quantification of failure cascades on oil platforms by using Bayesian networks to improve safety assessment for certification (co-funded by DNV-GL).
- Krylov regularisation in a Bayesian framework for low-resolution Nuclear Magnetic Resonance to assess properties of porous media for real-time exploration (co-funded by Schlumberger).
- Machine learning methods to untangle oceanographic sound data for a variety of goals in including the protection of wildlife in shipping lanes (with the Department of Physics).
Future committed partners for SAMBa 2.0 are: BT, Syngenta, Schlumberger, DNV GL, Wood, ONS, AstraZeneca, Roche, Diamond Light Source, GKN, NHS, NPL, Environment Agency, Novartis, Cytel, Mango, Moogsoft, Willis Towers Watson.
SAMBa's core mission is to train the next generation of academic and industrial researchers with the breadth and depth of skills necessary to address these challenges. SAMBa's most sustained impact will be through the contributions these researchers make over the longer term of their careers. To set the students up with the skills needed to maximise this impact, SAMBa has developed a bespoke training experience in collaboration with industry, at the heart of its activities. Integrative Think Tanks (ITTs) are week-long workshops in which industrial partners present high-level research challenges to students and academics. All participants work collaboratively to formulate mathematical
models and questions that address the challenges. These outputs are meaningful both to the non-academic partner, and as a mechanism for identifying mathematical topics which are suitable for PhD research. Through the co-ownership of collaboratively developed projects, SAMBa has the capacity to lead industry in capitalising on recent advances in mathematics. ITTs occur twice a year and excel in the process of problem distillation and formulation, resulting in an exemplary environment for developing impactful projects.
SAMBa's impact on the student experience will be profound, with training in a broad range of mathematical areas, in team working, in academic-industrial collaborations, and in developing skills in communicating with specialist and generalist audiences about their research. Experience with current SAMBa students has proven that these skills are highly prized: "The SAMBa approach was a great template for setting up a productive, creative and collaborative atmosphere. The commitment of the students in getting involved with unfamiliar areas of research and applying their experience towards producing solutions was very impressive." - Dr Mike Marsh, Space weather researcher, Met Office.
Organisations
People |
ORCID iD |
Sinyoung PARK (Student) |
Studentship Projects
Project Reference | Relationship | Related To | Start | End | Student Name |
---|---|---|---|---|---|
EP/S022945/1 | 30/09/2019 | 30/03/2028 | |||
2784491 | Studentship | EP/S022945/1 | 30/09/2022 | 29/09/2025 | Sinyoung PARK |