View a PDF of the paper titled Landscaper: Understanding Loss Landscapes Through Multi-Dimensional Topological Analysis, by Jiaqing Chen and 10 other authors
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Abstract:Loss landscapes are a powerful tool for understanding neural network optimization and generalization, yet traditional low-dimensional analyses often miss complex topological features. We present Landscaper, an open-source Python package for arbitrary-dimensional loss landscape analysis. Landscaper combines Hessian-based subspace construction with topological data analysis to reveal geometric structures such as basin hierarchy and connectivity. A key component is the Saddle-Minimum Average Distance (SMAD) for quantifying landscape smoothness. We demonstrate Landscaper’s effectiveness across various architectures and tasks, including those involving pre-trained language models, showing that SMAD captures training transitions, such as landscape simplification, that conventional metrics miss. We also illustrate Landscaper’s performance in challenging chemical property prediction tasks, where SMAD can serve as a metric for out-of-distribution generalization, offering valuable insights for model diagnostics and architecture design in data-scarce scientific machine learning scenarios.
Submission history
From: Jiaqing Chen [view email]
[v1]
Fri, 6 Feb 2026 19:17:08 UTC (13,413 KB)
[v2]
Thu, 12 Feb 2026 17:33:30 UTC (13,236 KB)


