2023
DOI: 10.1093/mnras/stad2212
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Towards a full wCDM map-based analysis for weak lensing surveys

Abstract: The next generation of weak lensing surveys will measure the matter distribution of the local Universe with unprecedented precision, allowing the resolution of non-Gaussian features of the convergence field. This encourages the use of higher-order mass-map statistics for cosmological parameter inference. We extend the forward-modelling based methodology introduced in a previous forecast paper to match these new requirements. We provide multiple forecasts for the wCDM parameter constraints that can be expected … Show more

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Cited by 8 publications
(5 citation statements)
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“…The second technique, PCA, allows us to find a new set of coordinates that can efficiently represent the data by choosing the modes giving rise to the highest variance across a dataset. In the present case, we perform a PCA compression on the emulator training set to find the vectors that capture the most variance as we span the parameter space within the priors (following an approach similar to [83,122]). PCA is a useful comparison to MOPED as one is free to keep as many PCA components (N PCA ) as desired.…”
Section: Data Compressionmentioning
confidence: 99%
See 1 more Smart Citation
“…The second technique, PCA, allows us to find a new set of coordinates that can efficiently represent the data by choosing the modes giving rise to the highest variance across a dataset. In the present case, we perform a PCA compression on the emulator training set to find the vectors that capture the most variance as we span the parameter space within the priors (following an approach similar to [83,122]). PCA is a useful comparison to MOPED as one is free to keep as many PCA components (N PCA ) as desired.…”
Section: Data Compressionmentioning
confidence: 99%
“…We used functionalities provided by numpy [146], scipy [147], and matplotlib [148] for this work. Job arrays were submitted using esub-epipe [122,149]. Corner plots were created with trianglechain [8,83].…”
Section: Acknowledgmentsmentioning
confidence: 99%
“…We thank the High Performance Computing group at ETH Zurich for support with the Euler cluster, which was heavily used throughout this work. We submitted jobarrays to the cluster using esub-epipe [75,76]. We used functionalities from several Python packages: numpy [77], scipy [78], and matplotlib [79].…”
Section: Jcap05(2024)049mentioning
confidence: 99%
“…Various features have been proposed to extract the information beyond 2-pt, including the bispectrum [20][21][22][23] and trispectrum [24], higher order moments of mass maps [25][26][27][28], Minkowski functionals [29][30][31][32], weak lensing voids [33,34], and wavelet decomposition coefficients [35]. The feature that has been most extensively studied is the shear peaks counts [19,[36][37][38][39][40] The peak counts were used to make measurements from surveys [41][42][43][44][45] and recently by Zürcher et al [46, hereafter [46]]. Several non-Gaussian analyses combine features from different probes: the density split statistics [47][48][49], and Minkowski functionals [50].…”
Section: Inference With Non-gaussian Featuresmentioning
confidence: 99%