Dynamical mass inference of galaxy clusters with neural flows

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Dynamical mass inference of galaxy clusters with neural flows. / Ramanah, Doogesh Kodi; Wojtak, Radoslaw; Ansari, Zoe; Gall, Christa; Hjorth, Jens.

In: Monthly Notices of the Royal Astronomical Society, Vol. 499, No. 2, 21.09.2020, p. 1985-1997.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Ramanah, DK, Wojtak, R, Ansari, Z, Gall, C & Hjorth, J 2020, 'Dynamical mass inference of galaxy clusters with neural flows', Monthly Notices of the Royal Astronomical Society, vol. 499, no. 2, pp. 1985-1997. https://doi.org/10.1093/mnras/staa2886

APA

Ramanah, D. K., Wojtak, R., Ansari, Z., Gall, C., & Hjorth, J. (2020). Dynamical mass inference of galaxy clusters with neural flows. Monthly Notices of the Royal Astronomical Society, 499(2), 1985-1997. https://doi.org/10.1093/mnras/staa2886

Vancouver

Ramanah DK, Wojtak R, Ansari Z, Gall C, Hjorth J. Dynamical mass inference of galaxy clusters with neural flows. Monthly Notices of the Royal Astronomical Society. 2020 Sep 21;499(2):1985-1997. https://doi.org/10.1093/mnras/staa2886

Author

Ramanah, Doogesh Kodi ; Wojtak, Radoslaw ; Ansari, Zoe ; Gall, Christa ; Hjorth, Jens. / Dynamical mass inference of galaxy clusters with neural flows. In: Monthly Notices of the Royal Astronomical Society. 2020 ; Vol. 499, No. 2. pp. 1985-1997.

Bibtex

@article{569a0dc2cb304fb5b14bd2f84ce0bdf5,
title = "Dynamical mass inference of galaxy clusters with neural flows",
abstract = "We present an algorithm for inferring the dynamical mass of galaxy clusters directly from their respective phase-space distributions, that is, the observed line-of-sight velocities and projected distances of galaxies from the cluster centre. Our method employs normalizing flows, a deep neural network capable of learning arbitrary high-dimensional probability distributions, and inherently accounts, to an adequate extent, for the presence of interloper galaxies which are not bounded to a given cluster, the primary contaminant of dynamical mass measurements. We validate and showcase the performance of our neural flow approach to robustly infer the dynamical mass of clusters from a realistic mock cluster catalogue. A key aspect of our novel algorithm is that it yields the probability density function of the mass of a particular cluster, thereby providing a principled way of quantifying uncertainties, in contrast to conventional machine learning (ML) approaches. The neural network mass predictions, when applied to a contaminated catalogue with interlopers, have a mean overall logarithmic residual scatter of 0.028 dex, with a lognormal scatter of 0.126 dex, which goes down to 0.089 dex for clusters in the intermediate- to high-mass range. This is an improvement by nearly a factor of 4 relative to the classical cluster mass scaling relation with the velocity dispersion, and outperforms recently proposed ML approaches. We also apply our neural flow mass estimator to a compilation of galaxy observations of some well-studied clusters with robust dynamical mass estimates, further substantiating the efficacy of our algorithm.",
keywords = "methods: numerical, methods: statistical, galaxies: clusters: general, DIGITAL SKY SURVEY, RECONSTRUCTION PROJECT, MATTER, CONSTRAINTS, ANISOTROPY, PARAMETER, CATALOG, INFALL, III.",
author = "Ramanah, {Doogesh Kodi} and Radoslaw Wojtak and Zoe Ansari and Christa Gall and Jens Hjorth",
year = "2020",
month = sep,
day = "21",
doi = "10.1093/mnras/staa2886",
language = "English",
volume = "499",
pages = "1985--1997",
journal = "Royal Astronomical Society. Monthly Notices",
issn = "0035-8711",
publisher = "Oxford University Press",
number = "2",

}

RIS

TY - JOUR

T1 - Dynamical mass inference of galaxy clusters with neural flows

AU - Ramanah, Doogesh Kodi

AU - Wojtak, Radoslaw

AU - Ansari, Zoe

AU - Gall, Christa

AU - Hjorth, Jens

PY - 2020/9/21

Y1 - 2020/9/21

N2 - We present an algorithm for inferring the dynamical mass of galaxy clusters directly from their respective phase-space distributions, that is, the observed line-of-sight velocities and projected distances of galaxies from the cluster centre. Our method employs normalizing flows, a deep neural network capable of learning arbitrary high-dimensional probability distributions, and inherently accounts, to an adequate extent, for the presence of interloper galaxies which are not bounded to a given cluster, the primary contaminant of dynamical mass measurements. We validate and showcase the performance of our neural flow approach to robustly infer the dynamical mass of clusters from a realistic mock cluster catalogue. A key aspect of our novel algorithm is that it yields the probability density function of the mass of a particular cluster, thereby providing a principled way of quantifying uncertainties, in contrast to conventional machine learning (ML) approaches. The neural network mass predictions, when applied to a contaminated catalogue with interlopers, have a mean overall logarithmic residual scatter of 0.028 dex, with a lognormal scatter of 0.126 dex, which goes down to 0.089 dex for clusters in the intermediate- to high-mass range. This is an improvement by nearly a factor of 4 relative to the classical cluster mass scaling relation with the velocity dispersion, and outperforms recently proposed ML approaches. We also apply our neural flow mass estimator to a compilation of galaxy observations of some well-studied clusters with robust dynamical mass estimates, further substantiating the efficacy of our algorithm.

AB - We present an algorithm for inferring the dynamical mass of galaxy clusters directly from their respective phase-space distributions, that is, the observed line-of-sight velocities and projected distances of galaxies from the cluster centre. Our method employs normalizing flows, a deep neural network capable of learning arbitrary high-dimensional probability distributions, and inherently accounts, to an adequate extent, for the presence of interloper galaxies which are not bounded to a given cluster, the primary contaminant of dynamical mass measurements. We validate and showcase the performance of our neural flow approach to robustly infer the dynamical mass of clusters from a realistic mock cluster catalogue. A key aspect of our novel algorithm is that it yields the probability density function of the mass of a particular cluster, thereby providing a principled way of quantifying uncertainties, in contrast to conventional machine learning (ML) approaches. The neural network mass predictions, when applied to a contaminated catalogue with interlopers, have a mean overall logarithmic residual scatter of 0.028 dex, with a lognormal scatter of 0.126 dex, which goes down to 0.089 dex for clusters in the intermediate- to high-mass range. This is an improvement by nearly a factor of 4 relative to the classical cluster mass scaling relation with the velocity dispersion, and outperforms recently proposed ML approaches. We also apply our neural flow mass estimator to a compilation of galaxy observations of some well-studied clusters with robust dynamical mass estimates, further substantiating the efficacy of our algorithm.

KW - methods: numerical

KW - methods: statistical

KW - galaxies: clusters: general

KW - DIGITAL SKY SURVEY

KW - RECONSTRUCTION PROJECT

KW - MATTER

KW - CONSTRAINTS

KW - ANISOTROPY

KW - PARAMETER

KW - CATALOG

KW - INFALL

KW - III.

U2 - 10.1093/mnras/staa2886

DO - 10.1093/mnras/staa2886

M3 - Journal article

VL - 499

SP - 1985

EP - 1997

JO - Royal Astronomical Society. Monthly Notices

JF - Royal Astronomical Society. Monthly Notices

SN - 0035-8711

IS - 2

ER -

ID: 252292095