Shiny App for Repeated Measurements Course
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Updated
Jan 31, 2024 - HTML
Shiny App for Repeated Measurements Course
R package for fitting joint models to time-to-event and longitudinal data
Scikit-longitudinal (Sklong) is an open-source Python library & Scikit-Learn API compliant, tailored to longitudinal machine learning classification tasks. It is ideal for researchers, data scientists, and analysts, as it provides specialist tools for dealing with repeated-measures data challenges
Auto-Scikit-Longitudinal (Auto-Sklong) is an automated machine learning (AutoML) library designed to analyse longitudinal data (Classification tasks focussed as of today) using various search methods. Namely, Bayesian Optimisation via SMAC3, Asynchronous Successive Halving, Evolutionary Algorithms, and Random Search via GAMA
Trajpy - empowering feature engineering for trajectory analysis across domains.
scikit-lexicographical-trees: Based upon Scikit-Learn(-tree), it offers adapted trees and forest for Longitudinal Classification
Computation and visualization of standardized mean differences from simulated data
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