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Autores principales: Dhawalikar, Saee, Paranjape, Aseem, Alam, Shadab
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2506.16408
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author Dhawalikar, Saee
Paranjape, Aseem
Alam, Shadab
author_facet Dhawalikar, Saee
Paranjape, Aseem
Alam, Shadab
contents Forecasting cosmological constraints from halo-based statistics often suffers from instability in derivative estimates, especially when the number of simulations is limited. This instability reduces the reliability of Fisher forecasts and machine learning based approaches that use derivatives. We introduce a general framework that addresses this challenge by stabilizing the input statistic and then systematically identifying the optimal subset of summary statistics that maximizes cosmological information while simultaneously minimizing the instability of predicted constraints. We demonstrate this framework using the halo mass function as well as the Voronoi volume function (VVF), a summary statistic that captures beyond two-point clustering information. Applying our two-step procedure -- random sub-sampling followed by optimization -- improves the constraining power by up to a factor of 4, while also enhancing the stability of the forecasts across realizations. As surveys like Euclid, DESI, and LSST push toward tighter constraints, the ability to produce stable and accurate theoretical predictions is essential. Our results suggest that new summary statistics such as the VVF, combined with careful data curation and stabilization strategies, can play a key role in next-generation precision cosmology.
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institution arXiv
publishDate 2025
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spellingShingle Stabilizing simulation-based cosmological Fisher forecasts: a case study using the Voronoi volume function
Dhawalikar, Saee
Paranjape, Aseem
Alam, Shadab
Cosmology and Nongalactic Astrophysics
Forecasting cosmological constraints from halo-based statistics often suffers from instability in derivative estimates, especially when the number of simulations is limited. This instability reduces the reliability of Fisher forecasts and machine learning based approaches that use derivatives. We introduce a general framework that addresses this challenge by stabilizing the input statistic and then systematically identifying the optimal subset of summary statistics that maximizes cosmological information while simultaneously minimizing the instability of predicted constraints. We demonstrate this framework using the halo mass function as well as the Voronoi volume function (VVF), a summary statistic that captures beyond two-point clustering information. Applying our two-step procedure -- random sub-sampling followed by optimization -- improves the constraining power by up to a factor of 4, while also enhancing the stability of the forecasts across realizations. As surveys like Euclid, DESI, and LSST push toward tighter constraints, the ability to produce stable and accurate theoretical predictions is essential. Our results suggest that new summary statistics such as the VVF, combined with careful data curation and stabilization strategies, can play a key role in next-generation precision cosmology.
title Stabilizing simulation-based cosmological Fisher forecasts: a case study using the Voronoi volume function
topic Cosmology and Nongalactic Astrophysics
url https://arxiv.org/abs/2506.16408