Estimating Parameters of Gravitationally Lensed Quasars with Simulation-Based Inference and SplineCNNs最新文献

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Estimating Parameters of Gravitationally Lensed Quasars with Simulation-Based Inference and SplineCNNs 基于模拟推理和样条神经网络的引力透镜类星体参数估计
E. Danilov, A. Ćiprijanović, B. Nord
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