A generator for synthetic, multivariate & heterogeneous datasteams with probabilistically repeating patterns.
-
Updated
Feb 8, 2019 - R
A generator for synthetic, multivariate & heterogeneous datasteams with probabilistically repeating patterns.
Synthetic data generation for DataSHIELD
Simple synthetic data from data frames, tibbles, data.tables and lists
Simulation of Partition-of-Unity copulas in R, e.g. for the purpose of modeling risk or for the creation of synthetic data based on restricted datasets
Simulation framework for realistic large-scale individual-level health data generation
HR analysis including work around ONS Wellbeing questions.
An app to compare local data with public demographic data.
dsSynthetic library to generate synthetic data in DataSHIELD
Make Gapminder-style synthetic datasets
Generate synthetic data that is as fresh as the real thing
Generate synthetic longitudinal correlated data using distributions and correlations from real-world observational data
Partially Synthetic Data Generation for Recommender systems
Synthesize dataverse data based on DDI metadata
Reproducing and extending results from PrOCTOR paper (Predicting Odds of Clinical Trial Outcomes using Random forest) via gradient boosting methods
R package for Cardiovascular Risk Dataset and Data generation script
Access Synthetic CDISC Data from Archive Packages
R Package to generate synthetic data.
Generates synthetic data to apply simulations for causal inference
Add a description, image, and links to the synthetic-data topic page so that developers can more easily learn about it.
To associate your repository with the synthetic-data topic, visit your repo's landing page and select "manage topics."