The Wristband Gaussian Loss: Deterministic, Composable Latents via a Sphere-Interval Decomposition
Mikhail Parakhin, Andr\'e M. Carvalho, Patrick Haluptzok

TL;DR
The paper introduces the Wristband Gaussian Loss, a deterministic method for Gaussianizing point embeddings without sampling or iterative transport, validated through theoretical proofs and empirical benchmarks.
Contribution
It proposes a novel deterministic batch loss that Gaussianizes point embeddings using a sphere-interval decomposition, with efficient computation and theoretical guarantees.
Findings
Wristband achieves competitive 2D Gaussianization scores.
It outperforms in 10D and 128D benchmarks on complex dependencies.
The method is integrated into a Gaussian autoencoder for counterfactual sampling.
Abstract
We present the Wristband Gaussian Loss, a deterministic batch loss for Gaussianizing point embeddings without sampling, KL terms, or iterative transport. Each is mapped to a direction and a CDF-transformed radius on the wristband . We prove (and machine-verify in Lean~4) that for the pushforward wristband map equals iff the source is , and that the Neumann-reflected wristband repulsion energy is uniquely minimized at the uniform target. We compute this reflected-kernel objective in two ways: a nearest three-image pairwise truncation at , and a spectral Neumann path joining angular and radial Mercer modes (spherical-harmonic and cosine) at , with empirically matched gradients. A 1D Wasserstein radial term and a…
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