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EmpiricalDynamics

Empirical Discovery of Differential Equations from Time Series Data

A comprehensive toolkit for discovering differential and difference equations from empirical time series data using symbolic regression. The package implements a complete workflow from data preprocessing (including Total Variation Regularized differentiation for noisy economic data), visual exploration of dynamical structure, and symbolic equation discovery via genetic algorithms. It leverages a high-performance 'Julia' backend ('SymbolicRegression.jl') to provide industrial-grade robustness, physics-informed constraints, and rigorous out-of-sample validation. Designed for economists, physicists, and researchers studying dynamical systems from observational data.

Versions across snapshots

VersionRepositoryFileSize
0.1.3 rolling source/ R- EmpiricalDynamics_0.1.3.tar.gz 122.0 KiB
0.1.3 latest source/ R- EmpiricalDynamics_0.1.3.tar.gz 122.0 KiB
0.1.3 2026-04-09 windows/windows R-4.5 EmpiricalDynamics_0.1.3.zip 452.7 KiB

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