Towards Scalable Persistence-Based Topological Optimization

arXiv:2605.1099611.1
Predicted impact top 72% in CG · last 90 daysOriginality Incremental advance
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For researchers in topological data analysis and geometric optimization, this work addresses computational bottlenecks in optimizing persistence-based objectives, offering a more scalable pipeline.

The paper tackles scalability issues in persistence-based topological optimization by proposing random slicing for subsampling and Nadaraya-Watson smoothing for gradient extension, achieving consistent speedups and improved objective values on common persistence losses in 2D and 3D experiments.

Persistence-based topological optimization deforms a point cloud $X \subset \mathbb{R}^d$ by minimizing objectives of the form $L(X) = \ell(\mathrm{Dgm}(X))$, where $\mathrm{Dgm}(X)$ is a persistence diagram. In practice, optimization is limited by two coupled issues: persistent homology is typically computed on subsamples, and the resulting topological gradients are highly sparse, with only a few anchor points receiving nonzero updates. Motivated by diffeomorphic interpolation, which extends sparse gradients to smooth ambient vector fields via Reproducing Kernel Hilbert Space (RKHS) interpolation, we propose a more scalable pipeline that improves both subsampling and gradient extension. We introduce subsampling via random slicing, a lightweight scheme that promotes iteration-wise geometric coverage and mitigates density bias. We further replace the costly kernel solve with a fast Nadaraya-Watson (NW) Gaussian convolution, producing a globally defined smooth update field at a fraction of the computational cost, while being more suited for topological optimization tasks. We provide theoretical guarantees for NW smoothing, including anchor approximation bounds and global Lipschitz estimates. Experiments in $2$D and $3$D show that combining random slicing with NW smoothing yields consistent speedups and improved objective values over other baselines on common persistence losses.

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