Publication | Open Access
Distinguishing standard and modified gravity cosmologies with machine learning
65
Citations
48
References
2019
Year
Alternative CosmologyConvolutional Neural NetworkEngineeringMachine LearningGeneral RelativityCosmic Neutrino BackgroundCosmologyNeural NetworkModified GravityKnowledge DiscoveryDark Matter SearchDark EnergyDark MatterObservational CosmologyGravitation TheoryQuantum CosmologyObservational PhysicsCosmic Acceleration
We present a convolutional neural network to classify distinct cosmological scenarios based on the statistically similar weak-lensing maps they generate. Modified gravity (MG) models that include massive neutrinos can mimic the standard concordance model [Lambda cold dark matter ($\mathrm{\ensuremath{\Lambda}}\mathrm{CDM}$)] in terms of Gaussian weak-lensing observables. An inability to distinguish viable models that are based on different physics potentially limits a deeper understanding of the fundamental nature of cosmic acceleration. For a fixed redshift of sources, we demonstrate that a machine learning network trained on simulated convergence maps can discriminate between such models better than conventional higher-order statistics. Results improve further when multiple source redshifts are combined. To accelerate training, we implement a novel data compression strategy that incorporates our prior knowledge of the morphology of typical convergence map features. Our method fully distinguishes $\mathrm{\ensuremath{\Lambda}}\mathrm{CDM}$ from its most similar MG model on noise-free data, and it correctly identifies among the MG models with at least 80% accuracy when using the full redshift information. Adding noise lowers the correct classification rate of all models, but the neural network still significantly outperforms the peak statistics used in a previous analysis.
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