Cosmological constraints from weak lensing scattering transform using HSC Y1 data
Sihao Cheng, Gabriela A. Marques, Daniela Grand’on, Leander Thiele, Masato Shirasaki, Brice M’enard, Jia Liu
arXiv:2404.16085v1 Announce Type: new
Abstract: As weak lensing surveys go deeper, there is an increasing need for reliable characterization of non-Gaussian structures at small angular scales. Here we present the first cosmological constraints with weak lensing scattering transform, a statistical estimator that combines efficiency, robustness, and interpretability. With the Hyper Suprime-Cam survey (HSC) year 1 data, we obtain $Omega_text{m}=0.29_{-0.03}^{+0.04}$, $S_8equiv sigma_8(Omega_text{m}/0.3)^{0.5}=0.83pm0.02$, and intrinsic alignment strength $A_text{IA}=1.0pm0.4$ through simulation-based forward modeling. Our constraints are consistent with those derived from Planck. The error bar of $Omega_text{m}$ is 2 times tighter than that obtained from the power spectrum when the same scale range is used. This constraining power is on par with that of convolutional neural networks, suggesting that further investment in spatial information extraction may not yield substantial benefits.
We also point out an internal tension of $S_8$ estimates linked to a redshift bin around z ~ 1 in the HSC data. We found that discarding that bin leads to a consistent decrease of $S_8$ from 0.83 to 0.79, for all statistical estimators. We argue that photometric redshift estimation is now the main limitation in the estimation of $S_8$ using HSC. This limitation is likely to affect other ground-based weak lensing surveys reaching redshifts greater than one. Alternative redshift estimation techniques, like clustering redshifts, may help alleviate this limitation.arXiv:2404.16085v1 Announce Type: new
Abstract: As weak lensing surveys go deeper, there is an increasing need for reliable characterization of non-Gaussian structures at small angular scales. Here we present the first cosmological constraints with weak lensing scattering transform, a statistical estimator that combines efficiency, robustness, and interpretability. With the Hyper Suprime-Cam survey (HSC) year 1 data, we obtain $Omega_text{m}=0.29_{-0.03}^{+0.04}$, $S_8equiv sigma_8(Omega_text{m}/0.3)^{0.5}=0.83pm0.02$, and intrinsic alignment strength $A_text{IA}=1.0pm0.4$ through simulation-based forward modeling. Our constraints are consistent with those derived from Planck. The error bar of $Omega_text{m}$ is 2 times tighter than that obtained from the power spectrum when the same scale range is used. This constraining power is on par with that of convolutional neural networks, suggesting that further investment in spatial information extraction may not yield substantial benefits.
We also point out an internal tension of $S_8$ estimates linked to a redshift bin around z ~ 1 in the HSC data. We found that discarding that bin leads to a consistent decrease of $S_8$ from 0.83 to 0.79, for all statistical estimators. We argue that photometric redshift estimation is now the main limitation in the estimation of $S_8$ using HSC. This limitation is likely to affect other ground-based weak lensing surveys reaching redshifts greater than one. Alternative redshift estimation techniques, like clustering redshifts, may help alleviate this limitation.

Comments are closed, but trackbacks and pingbacks are open.