volume 111 issue 6 publication number 063549

Signal-preserving CMB component separation with machine learning

Fiona McCarthy 1, 2, 3
J. Colin Hill 4
William R Coulton 1, 2, 3
David W. Hogg 3, 5, 6, 7
1
 
2
 
Kavli Institute for Cosmology Cambridge
6
 
Center for Cosmology and Particle Physics
Publication typeJournal Article
Publication date2025-03-28
scimago Q1
wos Q1
SJR1.458
CiteScore9.0
Impact factor5.3
ISSN24700010, 24700029, 05562821, 10894918, 15507998, 15502368
Abstract

Analysis of microwave sky signals, such as the cosmic microwave background, often requires component separation using multifrequency methods, whereby different signals are isolated according to their different frequency behaviors. Many so-called blind methods, such as the internal linear combination (ILC), make minimal assumptions about the spatial distribution of the signal or contaminants, and only assume knowledge of the frequency dependence of the signal. The ILC produces a minimum-variance linear combination of the measured frequency maps. In the case of Gaussian, statistically isotropic fields, this is the optimal linear combination, as the variance is the only statistic of interest. However, in many cases the signal we wish to isolate, or the foregrounds we wish to remove, are non-Gaussian and/or statistically anisotropic (in particular for the case of Galactic foregrounds). In such cases, it is possible that machine learning (ML) techniques can be used to exploit the non-Gaussian features of the foregrounds and thereby improve component separation. However, many ML techniques require the use of complex, difficult-to-interpret operations on the data. We propose a hybrid method whereby we train an ML model using only combinations of the data that , and combine the resulting ML-predicted foreground estimate with the ILC solution to reduce the error from the ILC. We demonstrate our methods on simulations of extragalactic temperature and Galactic polarization foregrounds and show that our ML model can exploit non-Gaussian features, such as point sources and spatially varying spectral indices, to produce lower-variance maps than ILC—e.g., reducing the variance of the B-mode residual by factors of up to 5—while preserving the signal of interest in an unbiased manner. Moreover, we often find improved performance even when applying our ML technique to foreground models on which it was not trained.

Published by the American Physical Society 2025
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McCarthy F. et al. Signal-preserving CMB component separation with machine learning // Physical Review D. 2025. Vol. 111. No. 6. 063549
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McCarthy F., Hill J. C., Coulton W. R., Hogg D. W. Signal-preserving CMB component separation with machine learning // Physical Review D. 2025. Vol. 111. No. 6. 063549
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TY - JOUR
DO - 10.1103/physrevd.111.063549
UR - https://link.aps.org/doi/10.1103/PhysRevD.111.063549
TI - Signal-preserving CMB component separation with machine learning
T2 - Physical Review D
AU - McCarthy, Fiona
AU - Hill, J. Colin
AU - Coulton, William R
AU - Hogg, David W.
PY - 2025
DA - 2025/03/28
PB - American Physical Society (APS)
IS - 6
VL - 111
SN - 2470-0010
SN - 2470-0029
SN - 0556-2821
SN - 1089-4918
SN - 1550-7998
SN - 1550-2368
ER -
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@article{2025_McCarthy,
author = {Fiona McCarthy and J. Colin Hill and William R Coulton and David W. Hogg},
title = {Signal-preserving CMB component separation with machine learning},
journal = {Physical Review D},
year = {2025},
volume = {111},
publisher = {American Physical Society (APS)},
month = {mar},
url = {https://link.aps.org/doi/10.1103/PhysRevD.111.063549},
number = {6},
pages = {063549},
doi = {10.1103/physrevd.111.063549}
}