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📄 Abstract
Abstract: Neural density estimation has seen widespread applications in the
gravitational-wave (GW) data analysis, which enables real-time parameter
estimation for compact binary coalescences and enhances rapid inference for
subsequent analysis such as population inference. In this work, we explore the
application of using the Kolmogorov-Arnold network (KAN) to construct efficient
and interpretable neural density estimators for lightweight posterior
construction of GW catalogs. By replacing conventional activation functions
with learnable splines, KAN achieves superior interpretability, higher
accuracy, and greater parameter efficiency on related scientific tasks.
Leveraging this feature, we propose a KAN-based neural density estimator, which
ingests megabyte-scale GW posterior samples and compresses them into model
weights of tens of kilobytes. Subsequently, analytic expressions requiring only
several kilobytes can be further distilled from these neural network weights
with minimal accuracy trade-off. In practice, GW posterior samples with
fidelity can be regenerated rapidly using the model weights or analytic
expressions for subsequent analysis. Our lightweight posterior construction
strategy is expected to facilitate user-level data storage and transmission,
paving a path for efficient analysis of numerous GW events in the
next-generation GW detectors.