FMMI: Flow Matching Mutual Information Estimation
About
We introduce a novel Mutual Information (MI) estimator that fundamentally reframes the discriminative approach. Instead of training a classifier to discriminate between joint and marginal distributions, we learn a normalizing flow that transforms one into the other. This technique produces a computationally efficient and precise MI estimate that scales well to high dimensions and across a wide range of ground-truth MI values.
Ivan Butakov, Alexander Semenenko, Valeriya Kirova, Alexey Frolov, Ivan Oseledets• 2025
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Mutual Information Estimation | In-Meta-Distribution (IMD) (test) | MSE17 | 36 | |
| Mutual Information Estimation | Out-of-Meta-Distribution (OoMD) (test) | MSE28 | 36 | |
| Mutual Information Estimation | M extended (test) | Time / sample (s)15.71 | 12 |
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