Wisdom of crowds for robust gene network inference (As part of the DREAM5 consortium) D Marbach, JC Costello, R Küffner, NM Vega, RJ Prill, DM Camacho, ... Nature Methods, 2012 | 1831 | 2012 |
Techniques for clustering gene expression data G Kerr, HJ Ruskin, M Crane, P Doolan Computers in biology and medicine 38 (3), 283-293, 2008 | 333 | 2008 |
Random matrix theory for portfolio optimization: a stability approach S Sharifi, M Crane, A Shamaie, H Ruskin Physica A: Statistical Mechanics and its Applications 335 (3-4), 629-643, 2004 | 134 | 2004 |
RNA-Seq vs dual-and single-channel microarray data: sensitivity analysis for differential expression and clustering A Sîrbu, G Kerr, M Crane, HJ Ruskin PloS one 7 (12), e50986, 2012 | 127 | 2012 |
Time and scale Hurst exponent analysis for financial markets JAO Matos, SMA Gama, HJ Ruskin, A Al Sharkasi, M Crane Physica A: Statistical Mechanics and its Applications 387 (15), 3910-3915, 2008 | 127 | 2008 |
Cross-correlation dynamics in financial time series T Conlon, HJ Ruskin, M Crane Physica A: Statistical Mechanics and its Applications 388 (5), 705-714, 2009 | 109 | 2009 |
Comparison of evolutionary algorithms in gene regulatory network model inference A Sîrbu, HJ Ruskin, M Crane BMC bioinformatics 11, 1-20, 2010 | 101 | 2010 |
Random matrix theory and fund of funds portfolio optimisation T Conlon, HJ Ruskin, M Crane Physica A: Statistical Mechanics and its applications 382 (2), 565-576, 2007 | 95 | 2007 |
Random matrix theory filters in portfolio optimisation: A stability and risk assessment J Daly, M Crane, HJ Ruskin Physica A: Statistical Mechanics and its Applications 387 (16-17), 4248-4260, 2008 | 71 | 2008 |
Wavelet multiscale analysis for hedge funds: Scaling and strategies T Conlon, M Crane, HJ Ruskin Physica A: Statistical Mechanics and its Applications 387 (21), 5197-5204, 2008 | 63 | 2008 |
Interrelationships among international stock market indices: Europe, Asia and the Americas A Sharkasi, HJ Ruskin, M Crane International Journal of Theoretical and Applied Finance 8 (05), 603-622, 2005 | 56 | 2005 |
Learning behaviours data in programming education: Community analysis and outcome prediction with cleaned data TT Mai, M Bezbradica, M Crane Future Generation Computer Systems 127, 42-55, 2022 | 53 | 2022 |
The reaction of stock markets to crashes and events: A comparison study between emerging and mature markets using wavelet transforms A Sharkasi, M Crane, HJ Ruskin, JA Matos Physica A: Statistical Mechanics and its Applications 368 (2), 511-521, 2006 | 53 | 2006 |
Probabilistic models for drug dissolution. Part 1. Review of Monte Carlo and stochastic cellular automata approaches A Barat, HJ Ruskin, M Crane Simulation Modelling Practice and Theory 14 (7), 843-856, 2006 | 48 | 2006 |
Quantitative multi-agent models for simulating protein release from PLGA bioerodible nano-and microspheres A Barat, M Crane, HJ Ruskin Journal of Pharmaceutical and Biomedical Analysis 48 (2), 361-368, 2008 | 37 | 2008 |
Probabilistic methods for drug dissolution. Part 2. Modelling a soluble binary drug delivery system dissolving in vitro A Barat, HJ Ruskin, M Crane Simulation modelling practice and theory 14 (7), 857-873, 2006 | 37 | 2006 |
Comparison of microarray preprocessing methods K Shakya, HJ Ruskin, G Kerr, M Crane, J Becker Advances in computational biology, 139-147, 2010 | 36 | 2010 |
Cross-platform microarray data normalisation for regulatory network inference A Sîrbu, HJ Ruskin, M Crane PLoS One 5 (11), e13822, 2010 | 32 | 2010 |
Design challenges for GDPR RegTech P Ryan, M Crane, R Brennan arXiv preprint arXiv:2005.12138, 2020 | 29 | 2020 |
The effect of a meteorological tower on its top-mounted anemometer D Perrin, N McMahon, M Crane, HJ Ruskin, L Crane, B Hurley Applied Energy 84 (4), 413-424, 2007 | 29 | 2007 |