Improved estimation of cluster mass profiles from the cosmic microwave background
Jaiyul Yoo, Matias Zaldarriaga (Harvard)

TL;DR
This paper introduces a new maximum likelihood estimator for reconstructing galaxy cluster mass profiles from CMB lensing data, which outperforms standard quadratic estimators especially in strong lensing regimes, enabling better dark energy studies.
Contribution
The paper develops a novel maximum likelihood estimator based on delensed CMB temperature fields, improving accuracy over quadratic estimators in high-lensing scenarios.
Findings
Estimator converges to the true model with iterative application.
Significantly improves signal-to-noise ratio for cluster mass measurements.
Applicable to realistic CMB experiments with secondary contaminants.
Abstract
We develop a new method for reconstructing cluster mass profiles and large-scale structure from the cosmic microwave background (CMB). By analyzing the likelihood of CMB lensing, we analytically prove that standard quadratic estimators for CMB lensing are unbiased and achieve the optimal condition only in the limit of no lensing; they become progressively biased and sub-optimal, when the lensing effect is large, especially for clusters that can be found by ongoing Sunyaev-Zel'dovich surveys. Adopting an alternative approach to the CMB likelihood, we construct a new maximum likelihood estimator that utilizes delensed CMB temperature fields based on an assumed model. We analytically show that this estimator asymptotically approaches the optimal condition as our assumed model is refined, and we numerically show that our estimator quickly converges to the true model as we iteratively apply…
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