Improving astrophysical scaling relations with machine learning
POSTER
Abstract
Finding low-scatter relationships in properties of complex systems (e.g., stars, supernovae, galaxies) is important to gain physical insights into them and/or to estimate their distances/masses. As the size of simulation/observational datasets grow, finding low-scatter relationships in the data becomes extremely arduous using manual data analysis methods. I will show how machine learning techniques can be used to expeditiously search for such relations in abstract high-dimensional data-spaces. Focusing on clusters of galaxies, I will present new scaling relations between their properties obtained using machine learning tools. Our relations can enable more accurate inference of cosmology and baryonic feedback from upcoming surveys of galaxy clusters such as ACT, SO, eROSITA and CMB-S4.
Publication: arXiv: 2201.01305, 2209.02075
Presenters
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Digvijay Wadekar
Institute for Advanced Study
Authors
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Digvijay Wadekar
Institute for Advanced Study
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Leander Thiele
Princeton University
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Francisco Villaescusa-Navarro
Flatiron Institute
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J. Colin Hill
Columbia University
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David N Spergel
Princeton University
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Miles Cranmer
Cambridge University
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Shivam Pandey
Columbia University
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Daisuke Nagai
Yale University
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Shirley Ho
Flatiron Institute
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Daniel Angles-Alcazar
University of Connecticut
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Lars Hernquist
Harvard
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Nicholas Battaglia
Cornell University