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Dr Daniel Stamate

Daniel’s research interests concern problems and applications involving soft computing and data science.

Staff details

Dr Daniel Stamate

Position

Senior Lecturer in Data Science

School

Computing

Email

Contact Daniel Stamate

Website

I am a Machine Learning scientist, Data Science team leader, Director of Data Science MSc Programme, and industry AI – Machine Learning expert speaker and consultant. I established and lead the  which has collaborations with various research groups at King’s College London, University of Manchester, Imperial College London, Maastricht University, and National Research Tomsk State University, and with companies in the City of London such as Santander Bank, Mizuho Investment Bank, etc. At Goldsmiths, I initiated, designed and run the MSc in Data Science - which inspired and was mostly replicated into similar online programme to come at University of London. I have a background in Computer Science and Mathematics, holding an MSc degree in Computer Science & Mathematics from - Faculty of Mathematics, and a PhD in Computer Science from  -  Computer Science Laboratory.

Publications and research outputs

Book Section

  • Stamate, Daniel. 2008. Imperfect Information Representation through Extended Logic Programs in Bilattices. In: Bernadette Bouchon-Meunier; Christophe Marsala; Maria Rifqi and Ronald R Yager, eds. UNCERTAINTY AND INTELLIGENT INFORMATION SYSTEMS. London: World Scientific, pp. 419-432. ISBN 978-981-279-234-1

Article

  • Shamsutdinova, Diana; Stamate, Daniel and Stahl, Daniel. 2025. Balancing accuracy and Interpretability: An R package assessing complex relationships beyond the Cox model and applications to clinical prediction. International Journal of Medical Informatics, 194, 105700. ISSN 1386-5056
  • Reeves, David; Morgan, Catharine; Stamate, Daniel; Ford, Elizabeth; Ashcroft, Darren M.; Kontopantelis, Evangelos; Van Marwijk, Harm and McMillan, Brian. 2024. Identifying individuals at high risk for dementia in primary care: Development and validation of the DemRisk risk prediction model using routinely collected patient data. PLoS ONE, 19(10), e0310712. ISSN 1932-6203
  • Stamate, Daniel; Kim, Min; Proitsi, Petroula; Westwood, Sarah; Baird, Alison; Nevado-Holgado, Alejo; Hye, Abdul; Bos, Isabelle; Vos, Stephanie; Vandenberghe, Rik; Teunissen, Charlotte E; Kate, Mara Ten; Scheltens, Philip; Gabel, Silvy; Meersmans, Karen; Blin, Olivier; Richardson, Jill; Roeck, Ellen De; Engelborghs, Sebastiaan; Sleegeres, Kristel; Bordet, Régis; Rami, Lorena; Kettunen, Petronella; Tsolaki, Magd; Verhey, Frans; Alcolea, Daniel; Lléo, Alberto; Peyratout, Gwendoline; Tainta, Mikel; Johannsen, Peter; Freund-Levi, Yvonne; Frölich, Lutz; Dobricic, Valerija; Frisoni, Giovanni B; Molinuevo, José L; Wallin, Anders; Popp, Julius; Martinez-Lage, Pablo; Bertram, Lars; Blennow, Kaj; Zetterberg, Henrik; Streffer, Johannes; Visser, Pieter J; Lovestone, Simon and Legido-Quigley, Cristina. 2019. A metabolite-based machine learning approach to diagnose Alzheimer’s-type dementia in blood: Results from the European Medical Information Framework for Alzheimer's Disease biomarker discovery cohort. Alzheimer’s & Dementia: Translational Research & Clinical Interventions, 5, pp. 933-938.

Conference or Workshop Item

  • Houstoun, Eoin; Stamate, Daniel; Musto, Henry; Reeves, David; Morgan, Catharine; Hutanu, Roxana; Mavromati, Kalliopi; Cadar, Dorina and Stahl, Daniel. 2025. 'Classifying Cognitive States of Alzheimer’s Disease with Machine Learning Using Digital Biomarkers from the Bio-Hermes Study Cohort'. In: Artificial Intelligence Applications and Innovations (AIAI 2025). Limassol, Cyprus 26 - 29 June 2025.
  • Musto, Henry; Stamate, Daniel; Reeves, David; Morgan, Catharine; Hutanu, Roxana; Mavromati, Kalliopi; Cadar, Dorina and Stahl, Daniel. 2025. 'Proteomics, Neuropsychological and Demographics Multimodal Machine Learning Approach to Alzheimer’s Disease Prediction on the Bio-Hermes Study Cohort'. In: Artificial Intelligence Applications and Innovations (AIAI 2025). Limassol, Cyprus 26 - 29 June 2025.
  • Musto, Henry; Stamate, Daniel; Logofatu, Doina and Stahl, Daniel. 2024. 'Predicting Deterioration in Mild Cognitive Impairment with Survival Transformers, Extreme Gradient Boosting and Cox Proportional Hazard Modelling'. In: Artificial Neural Networks and Machine Learning – ICANN 2024. Lugano, Switzerland 17 - 20 September 2024.

Research Interests

My current research is in the broader areas of Data Science and AI – Machine Learning, NLP. In particular I am interested in Machine Learning, Statistical Learning, and Predictive Modelling with a particular focus on: (a) NLP, text mining and sentiment analysis approaches to stock market forecasting and fraud detection; (b) Predictive modeling & computational psychiatry – ongoing work in collaboration with Institute of Psychiatry, Psychology and Neuroscience at King’s College London; (c) Predicting risk of dementia using routine primary care records, work in collaboration with University of Manchester and other partner universities; (d) Novel machine and statistical learning approaches to understand heterogeneous manifestations of asthma in early life, work in collaboration with the Department of Medicine, Imperial College London; (e) Decision trees and ensemble based methods with parameterised impurity families and statistical pruning (f) Mobility big data analytics – focusing on analysing smart card Oyster data of Transport for London. Another component of my research focuses on data uncertainty approaches, and Soft Computing. I previously worked in statistical databases, databases with uncertain information, and information integration. I supervise several PhD students in Data Science; prospective applicants are welcome to email me.