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==Background== | ==Background== |
Latest revision as of 15:50, 25 September 2022
Contents
SOCR News & Events: Complex-time (Kime) Representation of Longitudinal Data and Spacekime Analytics
Presenter
- Dr. Dinov is a professor of Health Behavior and Biological Sciences and Computational Medicine and Bioinformatics at the University of Michigan. He is a member of the Michigan Center for Applied and Interdisciplinary Mathematics (MCAIM) and a core member of the University of Michigan Comprehensive Cancer Center. Dr. Dinov serves as Director of the Statistics Online Computational Resource, Co-Director of the multi-institutional Probability Distributome Project, and Associate Director of the Michigan Institute for Data Science (MIDAS). He is a member of the American Statistical Association (ASA), International Association for Statistical Education (IASE), American Mathematical Society (AMS), American Association for the Advancement of Science (AAAS), American Physical Society (APS), and an Elected Member of the International Statistical Institute (ISI).
- Joint work with
Session Logistics
- Date/Time: Tuesday, October 25, 2022, 1:00 PM Eastern Time (10 PM Pacific Time)
- Talk Title: Complex-time (Kime) Representation of Longitudinal Data and Spacekime Analytics
- Event: Statistics in Imaging Section, American Statistical Association
- Session: EO420: Advances in statistical neuroimaging and spatio-temporal modeling
- Zoom: Zoom Channel
- Talk Format: Online Presentation
Abstract
- This presentation will describe the new complex-time (kime) representation of longitudinal data and the induced space-kime analytics. This approach translates quantum mechanics concepts into data science and lifts the classical 4D spacetime problems into a 5D spacekime manifold. Direct AI and statistical inference applications include translation of classical random sampling in spacetime to spacekime phase-uncertainty and a Bayesian formulation of spacekime analytics. We will show examples translating time-series data into kimesurfaces and present examples in neuroimaging and macroeconomics data.
Background
- SOCR News & Events
- SOCR Global Users
- SOCR Navigators
- SOCR Datasets and Challenging Case-studies
- Electronic Textbooks:
References
- Dinov, ID and Velev, MV (2021) Data Science: Time Complexity, Inferential Uncertainty, and Spacekime Analytics, De Gruyter (STEM Series), Berlin/Boston, ISBN 9783110697803 / 3110697807, DOI 10.1515/9783110697827.
- Wang, Y, Shen Y, Deng, D, Dinov, ID. (2022) Determinism, Well-posedness, and Applications of the Ultrahyperbolic Wave Equation in Spacekime, Journal of Partial Differential Equations in Applied Mathematics, DOI: 10.1016/j.padiff.2022.100280, in press.
- Zhang, R, Zhang, Y, Liu, Y, Guo, Y, Shen, Y, Deng, D, Qiu, Y, Dinov, ID. (2022) Kimesurface Representation and Tensor Linear Modeling of Longitudinal Data, Neural Computing and Applications Journal, DOI: 10.1007/s00521-021-06789-8.
- Spacekime website
- Time-Complexity and Inferential Uncertainty (TCIU)
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