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Flexible Tails for Normalizing Flows

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Normalizing flows are a flexible class of probability distributions, expressed as transformations of a simple base distribution. A limitation of standard normalizing flows is representing distributions with heavy tails, which arise in applications to both density estimation and variational inference. A popular current solution to this problem is to use a heavy tailed base distribution. We argue this can lead to poor performance due to the difficulty of optimising neural networks, such as normalizing flows, under heavy tailed input. We propose an alternative, "tail transform flow" (TTF), which uses a Gaussian base distribution and a final transformation layer which can produce heavy tails. Experimental results show this approach outperforms current methods, especially when the target distribution has large dimension or tail weight.

Tennessee Hickling, Dennis Prangle• 2024

Related benchmarks

TaskDatasetResultRank
Heavy-tailed Flow MatchingGumbel + Gaussian copulas (test)
WP10.083
80
Distribution EstimationHickling Student-t benchmark original (test)
Wasserstein-1 distance0.12
30
Generative ModelingGumbel + Gaussian Median across all configurations 480 values per cell
W1^P (Pareto Margins)0.25
20
Flow MatchingGumbel + Gaussian (alpha=2.0)
Catastrophic Failure Rate1
20
Flow MatchingGumbel + Gaussian alpha=1.5
Catastrophic Failure Fraction (WP1 > 1)32
20
Generative ModelingFama-French 5
W1 Distance0.449
5
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