arfpy: A python package for density estimation and generative modeling with adversarial random forests
Blesch, Kristin, Wright, Marvin N.
This paper introduces $\textit{arfpy}$, a python implementation of Adversarial Random Forests (ARF) (Watson et al., 2023), which is a lightweight procedure for synthesizing new data that resembles some given data. The software $\textit{arfpy}$ equips practitioners with straightforward functionalities for both density estimation and generative modeling. The method is particularly useful for tabular data and its competitive performance is demonstrated in previous literature. As a major advantage over the mostly deep learning based alternatives, $\textit{arfpy}$ combines the method's reduced requirements in tuning efforts and computational resources with a user-friendly python interface. This supplies audiences across scientific fields with software to generate data effortlessly.
Nov-13-2023
- Country:
- Europe
- Denmark > Capital Region
- Copenhagen (0.05)
- Germany > Bremen
- Bremen (0.15)
- Denmark > Capital Region
- Europe
- Genre:
- Research Report (0.40)
- Technology: