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Code underlying the paper "Missing data in amortized simulation-based neural posterior estimation"

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Data-missingness-paper

This repository contains all code and simulation scripts for the paper "Missing data in amortized simulation-based neural posterior estimation". It is divided into folders dedicated to the conducted numerical experiments.

Regarding the content of these folders:

  • The Jupyter notebooks were used to validate/compare the performance of trained missing data approaches and to create illustrative figures for the paper, including convergence plots, posterior plots, error metrics, etc.
  • Subfolders with the ending "ckpts" contain the Python script for training a BayesFlow network on a specific forward model, an output file of the running loss as well as the stored networks after the final training epoch.
  • Subfolders with the name "bayesflow" contain the implementation of the BayesFlow method (version 0.0.0b1) downloaded from https://github.com/stefanradev93/BayesFlow. In some cases, slight modifications have been made to meet the purpose of our numerical experiment.

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Code underlying the paper "Missing data in amortized simulation-based neural posterior estimation"

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  • Jupyter Notebook 99.2%
  • Python 0.8%