Danilo Mandic

Professor of Signal Processing at Imperial College London

Schools

  • Imperial College London

Links

Biography

Imperial College London

Prof Mandic is currently:

  • President of the International Neural Networks Society (INNS)
  • Distinguished Lecturer of the IEEE Computational Intelligence Society (IEEE CIS)
  • Distinguished Lecturer of the IEEE Signal Processing Society (IEE SPS)

Dr. Mandic received the Ph.D. degree in nonlinear adaptive signal processing in 1999 from Imperial College, London, London, U.K. where he is now a Professor. He specialises in Statistical Learning Theory, Machine Intelligence, and Statistical Signal Processing, and their applications especially in Biomedicine and Finance. He is a pioneer of Hearables (in-ear sensing of neural function and vital signs), an unobtrusive, discreet and long-term wearable solution for long-term physiological monitoring based on miniaturised sensors embedded on an earplug, an area where he holds several patents. He also specialises in Machine Intelligence for Finance, and is a Director of the Financial Signal Processing and Machine Learning Lab a Imperial.

He has written over 600 journal and conference articles, and research monographs on Recurrent Neural Networks (with Wiley, 2001), Complex-valued Adaptive Filters and Neural Networks (Wiley 2009), Tensor Networks for Dimensionality Reduction and Large Scale Optimisation (Now Publishers, 2017) and Data Analytics on Graphs (Now Publishers, 2021).

Prof Mandic is a 2019 recipient of the Dennis Gabor Award for "Outstanding Achievements in Neural Engineering", given by the International Neural Networks Society (INNS). He is also a 2018 winner of the Best Paper Award in IEEE Signal Processing Magazine, for his article on Tensor Decompositions for Signal Processing Application, and the 2021 winner of the Outstanding Paper Award in the IEEE ICASSP conference. He has coauthored 6 more award winning articles. He is a Core Member of the Machine Learning Initiative at Imperial.

Danilo is a President of the International Neural Networks Society, and a past Technical Chair of ICASSP 2019, held in Brighton UK. He also received President's Award for Excellence in Research Supevervision at Imperial College in 2014. Danilo is passionate about cross-disciplinary aspects of his work and about bringing research into the curriculum. His current research interests areas are Adaptive Learning Theory, Big Data, Machine Learning on Graphs, Neural Networks, and Complexity Science, and their applications in Biomedicine and Financial Engineering.

Selected Publications

Journal Articles

  • Scalzo B, Konstantinidis A, Mandic DP, 2021, Analysis of global fixed-income returns using multilinear tensor algebra, The Journal of Fixed Income, Vol:30, ISSN:1059-8596, Pages:32-52
  • Nakamura T, Alqurashi Y, Morrell M, et al., 2020, Hearables: automatic overnight sleep monitoring with standardised in-ear EEG sensor, IEEE Transactions on Biomedical Engineering, Vol:67, ISSN:0018-9294, Pages:203-212
  • Stankovic L, Mandic D, Dakovic M, et al., 2020, Data Analytics on Graphs Part I: Graphs and Spectra on Graphs, Foundations and Trends in Machine Learning, Vol:13, ISSN:1935-8237, Pages:1-157
  • Stankovic L, Mandic D, Dakovic M, et al., 2020, Data Analytics on Graphs Part II: Signals on Graphs, Foundations and Trends in Machine Learning, Vol:13, ISSN:1935-8237, Pages:158-331
  • Stankovic L, Mandic D, Dakovic M, et al., 2020, Data Analytics on Graphs Part III: Machine Learning on Graphs, from Graph Topology to Applications, Foundations and Trends in Machine Learning, Vol:13, ISSN:1935-8237, Pages:332-530
  • Stankovic L, Mandic DP, Dakovic M, et al., 2019, Understanding the Basis of Graph Signal Processing via an Intuitive Example-Driven Approach, IEEE Signal Processing Magazine, Vol:36, ISSN:1053-5888, Pages:133-145
  • von Rosenberg W, Chanwimalueang T, Goverdovsky V, et al., 2017, Hearables: feasibility of recording cardiac rhythms from head and in-ear locations, Royal Society Open Science, Vol:4, ISSN:2054-5703
  • Goverdovsky V, von Rosenberg W, Nakamura T, et al., 2017, Hearables: multimodal physiological in-ear sensing, Scientific Reports, Vol:7, ISSN:2045-2322

Videos

Read about executive education

Other experts

Looking for an expert?

Contact us and we'll find the best option for you.

Something went wrong. We're trying to fix this error.