A library to model multivariate data using copulas.
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Updated
Jun 22, 2026 - Python
A library to model multivariate data using copulas.
TACTiS-2: Better, Faster, Simpler Attentional Copulas for Multivariate Time Series, from ServiceNow Research
Python package for canonical vine copula trees with mixed continuous and discrete marginals
Code for paper "Copula-based conformal prediction for Multi-Target Regression"
Copula fitting in Python.
This repository contains the code of our published work in IEEE JBHI. Our main objective was to demonstrate the feasibility of the use of synthetic data to effectively train Machine Learning algorithms, prooving that it benefits classification performance most of the times.
Examples of scheduled jobs estimating copulas at www.microprediction.org
Python library for modelling complex multivariate dependencies using stochastic copulas
This repository contains the code for "Diffusion and Flow-based Copulas: Forgetting and Remembering Dependencies" accepted at ICLR 26.
From A to Z
Testing Pydantic, FastAPI, polyfactory, pandera and GraphQL with SQLModel and pydantic-mongo
Flow-based PC algorithm for causal discovery using Normalizing Flows
Multivariate time series generator based on the Phase Annealing algorithm. Various objective functions that focus on multivariate copula properties while annealing. Various plotting routines to visualize results. Take a look at the scripts in the "test" directory for how to use.
An institutional-grade statistical arbitrage engine leveraging Copula functions to model tail dependence and execute pairs trading strategies during market dislocations.
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