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Aug 14, 2024 - Python
longitudinal
Here are 30 public repositories matching this topic...
R functions to generate lavaan code for testing longitudinal measurement invariance
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May 5, 2021 - R
R/medltmle: Estimation for Natural Mediation Effect in Longitudinal Data
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Oct 2, 2017 - R
scikit-lexicographical-trees: Based upon Scikit-Learn(-tree), it offers adapted trees and forest for Longitudinal Classification
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Jul 31, 2024 - Python
Simulating Longitudinal and Network Data with Causal Inference Applications
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Oct 9, 2017 - R
An R-based Longitudinal mEtaGenomic Analysis Toolkit for microbiome data
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Oct 5, 2024 - R
Hurricane Track Analysis via Sasaki-based Splines Models
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Mar 31, 2023 - Jupyter Notebook
LDFR model
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May 23, 2018 - HTML
GWAS tools for longitudinal genetic traits based on fGWAS statistical model
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Oct 24, 2018 - R
Longitudinal Targeted Maximum Likelihood Estimation package
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Feb 17, 2014 - R
Simulates correlated multinomial responses conditional on a marginal model specification.
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Nov 5, 2018 - R
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Nov 10, 2018 - R
Handling an Inconsistently Coded Categorical Variable in a Longitudinal Dataset
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Feb 11, 2024 - Python
Using "t-SNE trajectories" for integrated visualization of multi-dimensional longitudinal trajectory datasets.
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Nov 9, 2020 - Python
Supplimental information and code associated with Baker and Wang. 2021. "Working with longitudinal data: quantifying developmental processes using function-valued trait modeling" American Journal of Botany 108(6): 905-908
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Jun 9, 2021 - HTML
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
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Jul 19, 2024 - Python
Proactive methodological disclosure of a high resolution precision calibrated estimate of the Gompertz-Makeham Law of Mortality and general utilization hazard rates through lifespan interferometry against annual census data consolidated from the administrative data of all publicly funded healthcare provided in a single geopolitical jurisdiction.
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May 27, 2020 - TSQL
Ordinal pattern analysis R package
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Mar 9, 2024 - R
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