2018
DOI: 10.1103/physrevd.98.123518
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Cosmological constraints from noisy convergence maps through deep learning

Abstract: Deep learning is a powerful analysis technique that has recently been proposed as a method to constrain cosmological parameters from weak lensing mass maps. Due to its ability to learn relevant features from the data, it is able to extract more information from the mass maps than the commonly used power spectrum, and thus achieve better precision for cosmological parameter measurement. We explore the advantage of Convolutional Neural Networks (CNN) over the power spectrum for varying levels of shape noise and … Show more

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Cited by 79 publications
(74 citation statements)
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References 74 publications
(103 reference statements)
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“…To reduce the training time, we trained the networks asynchronously on 16 GPUs for 1'500'000 iterations where we fed the network maps from eight cosmological parameter combinations at each iteration. For the network architectures with 10 and 15 residual blocks, it was not necessary to slowly increase the smoothing scale and noise level as in our previous work [23]. However, the network with 25 residual blocks did not converge when trained directly on noisy, smoothed maps.…”
Section: Iv33 Trainingmentioning
confidence: 95%
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“…To reduce the training time, we trained the networks asynchronously on 16 GPUs for 1'500'000 iterations where we fed the network maps from eight cosmological parameter combinations at each iteration. For the network architectures with 10 and 15 residual blocks, it was not necessary to slowly increase the smoothing scale and noise level as in our previous work [23]. However, the network with 25 residual blocks did not converge when trained directly on noisy, smoothed maps.…”
Section: Iv33 Trainingmentioning
confidence: 95%
“…As in previous work [23], we used the Ufalcon package [53] to generate the convergence maps. Ufalcon follows the procedure described in the appendix of [54] and uses the Hierarchical Equal Area iso-Latitude Pixelization tool [55] (HEALPix[56]).…”
Section: Iv12 Convergence Mapsmentioning
confidence: 99%
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