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  • Learning effective physical... Learning effective physical laws for generating cosmological hydrodynamics with Lagrangian deep learning
    Dai, Biwei; Seljak, Uroš Proceedings of the National Academy of Sciences - PNAS, 04/2021, Volume: 118, Issue: 16
    Journal Article
    Peer reviewed
    Open access

    The goal of generative models is to learn the intricate relations between the data to create new simulated data, but current approaches fail in very high dimensions. When the true data-generating ...
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  • Translation and rotation eq... Translation and rotation equivariant normalizing flow (TRENF) for optimal cosmological analysis
    Dai, Biwei; Seljak, Uroš Monthly notices of the Royal Astronomical Society, 09/2022, Volume: 516, Issue: 2
    Journal Article
    Peer reviewed
    Open access

    ABSTRACT Our Universe is homogeneous and isotropic, and its perturbations obey translation and rotation symmetry. In this work, we develop translation and rotation equivariant normalizing flow ...
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  • Multiscale Flow for robust ... Multiscale Flow for robust and optimal cosmological analysis
    Dai, Biwei; Seljak, Uroš Proceedings of the National Academy of Sciences - PNAS, 02/2024, Volume: 121, Issue: 9
    Journal Article
    Peer reviewed
    Open access

    We propose Multiscale Flow, a generative Normalizing Flow that creates samples and models the field-level likelihood of two-dimensional cosmological data such as weak lensing. Multiscale Flow uses ...
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  • Around the Way: Testing ΛCD... Around the Way: Testing ΛCDM with Milky Way Stellar Stream Constraints
    Dai, Biwei; Robertson, Brant E.; Madau, Piero The Astrophysical journal, 05/2018, Volume: 858, Issue: 2
    Journal Article
    Peer reviewed
    Open access

    Recent analyses of the Pal 5 and GD-1 tidal streams suggest that the inner dark matter halo of the Milky Way is close to spherical, in tension with predictions from collisionless N-body simulations ...
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  • The LHC Olympics 2020 a community challenge for anomaly detection in high energy physics
    Kasieczka, Gregor; Nachman, Benjamin; Shih, David ... Reports on progress in physics, 12/2021, Volume: 84, Issue: 12
    Journal Article
    Peer reviewed
    Open access

    A new paradigm for data-driven, model-agnostic new physics searches at colliders is emerging, and aims to leverage recent breakthroughs in anomaly detection and machine learning. In order to develop ...
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  • Multiscale Flow for Robust and Optimal Cosmological Analysis
    Dai, Biwei; Seljak, Uros arXiv.org, 02/2024
    Paper, Journal Article
    Open access

    We propose Multiscale Flow, a generative Normalizing Flow that creates samples and models the field-level likelihood of two-dimensional cosmological data such as weak lensing. Multiscale Flow uses ...
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  • Translation and Rotation Equivariant Normalizing Flow (TRENF) for Optimal Cosmological Analysis
    Dai, Biwei; Seljak, Uros arXiv.org, 02/2022
    Paper, Journal Article
    Open access

    Our universe is homogeneous and isotropic, and its perturbations obey translation and rotation symmetry. In this work we develop Translation and Rotation Equivariant Normalizing Flow (TRENF), a ...
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  • Sliced Iterative Normalizing Flows
    Dai, Biwei; Seljak, Uros arXiv.org, 06/2021
    Paper, Journal Article
    Open access

    We develop an iterative (greedy) deep learning (DL) algorithm which is able to transform an arbitrary probability distribution function (PDF) into the target PDF. The model is based on iterative ...
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