English

Flow-Based Density Ratio Estimation for Intractable Distributions with Applications in Genomics

Machine Learning 2026-03-02 v1

Abstract

Estimating density ratios between pairs of intractable data distributions is a core problem in probabilistic modeling, enabling principled comparisons of sample likelihoods under different data-generating processes across conditions and covariates. While exact-likelihood models such as normalizing flows offer a promising approach to density ratio estimation, naive flow-based evaluations are computationally expensive, as they require simulating costly likelihood integrals for each distribution separately. In this work, we leverage condition-aware flow matching to derive a single dynamical formulation for tracking density ratios along generative trajectories. We demonstrate competitive performance on simulated benchmarks for closed-form ratio estimation, and show that our method supports versatile tasks in single-cell genomics data analysis, where likelihood-based comparisons of cellular states across experimental conditions enable treatment effect estimation and batch correction evaluation.

Keywords

Cite

@article{arxiv.2602.24201,
  title  = {Flow-Based Density Ratio Estimation for Intractable Distributions with Applications in Genomics},
  author = {Egor Antipov and Alessandro Palma and Lorenzo Consoli and Stephan Günnemann and Andrea Dittadi and Fabian J. Theis},
  journal= {arXiv preprint arXiv:2602.24201},
  year   = {2026}
}
R2 v1 2026-07-01T10:55:54.957Z