TCIU - Spacekime Analytics, Time Complexity and Inferential Uncertainty
Provide the core functionality to transform longitudinal
data to complex-time (kime) data using analytic and numerical
techniques, visualize the original time-series and
reconstructed kime-surfaces, perform model based (e.g.,
tensor-linear regression) and model-free classification and
clustering methods in the book Dinov, ID and Velev, MV. (2021)
"Data Science: Time Complexity, Inferential Uncertainty, and
Spacekime Analytics", De Gruyter STEM Series, ISBN
978-3-11-069780-3.
<https://www.degruyter.com/view/title/576646>. The package
includes 18 core functions which can be separated into three
groups. 1) draw longitudinal data, such as Functional magnetic
resonance imaging(fMRI) time-series, and forecast or transform
the time-series data. 2) simulate real-valued time-series data,
e.g., fMRI time-courses, detect the activated areas, report the
corresponding p-values, and visualize the p-values in the 3D
brain space. 3) Laplace transform and kimesurface
reconstructions of the fMRI data.