Inferring dark matter substructure with astrometric lensing beyond the power spectrum

Mishra-Sharma, Siddharth (2022) Inferring dark matter substructure with astrometric lensing beyond the power spectrum. Machine Learning: Science and Technology, 3 (1). 01LT03. ISSN 2632-2153

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Abstract

Astrometry—the precise measurement of positions and motions of celestial objects—has emerged as a promising avenue for characterizing the dark matter population in our Galaxy. By leveraging recent advances in simulation-based inference and neural network architectures, we introduce a novel method to search for global dark matter-induced gravitational lensing signatures in astrometric datasets. Our method based on neural likelihood-ratio estimation shows significantly enhanced sensitivity to a cold dark matter population and more favorable scaling with measurement noise compared to existing approaches based on two-point correlation statistics. We demonstrate the real-world viability of our method by showing it to be robust to non-trivial modeled as well as unmodeled noise features expected in astrometric measurements. This establishes machine learning as a powerful tool for characterizing dark matter using astrometric data.

Item Type: Article
Subjects: South Asian Library > Multidisciplinary
Depositing User: Unnamed user with email support@southasianlibrary.com
Date Deposited: 05 Jul 2023 04:28
Last Modified: 20 Sep 2024 04:17
URI: http://journal.repositoryarticle.com/id/eprint/1283

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