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Visualizing multiparameter probabilistic models in Minkowski space

ORAL

Abstract

Many complexity-rich dynamical systems necessitate the use of a multiparameter probabilistic model to capture the observed system behavior succinctly. Unfortunately, multiparameter probabilistic models of large systems suffer from the curse of dimensionality. To alleviate this problem, we recently proposed a manifold embedding approach that borrows a concept from special relativity: the intensive symmetrized Kullback Liebler (isKL) embedding [1]. This approach generates an analytically tractable embedding for model predictions in Minkowski space, for most common probability distributions and statistical models. In principle, this technique not only offers a low dimensional representation of high dimensional data, but it also allows one to uncover hidden exponential families that describe experiments or simulations. In this talk, we will showcase how this technique can be combined with a probabilistic neural network to study cartilage tissue and bird song data.

[1] Teoh, et al. Phys. Rev. Research 2.3 (2020): 033221

Presenters

  • Han Kheng

    Department of Physics, Cornell University

Authors

  • Han Kheng

    Department of Physics, Cornell University

  • Itay Griniasty

    Department of Physics, Cornell University, Cornell University

  • Katherine N Quinn

    The Graduate Center, City University of New York, Center for the Physics of Biological Function, Princeton University

  • Jaron Kent-Dobias

    Laboratoire de Physique, Ecole Normale Supérieure, Department of Physics, Cornell University

  • Colin B Clement

    Department of Physics, Cornell University

  • Qingyang Xu

    MIT Operations Research Center, MIT

  • Jingyang Zheng

    Department of Physics, Cornell University

  • Andrea Roeser

    Department of Neurobiology and Behavior, Cornell University

  • James Patarasp Sethna

    Cornell University, Department of Physics, Cornell University

  • Itai Cohen

    Cornell University, Physics, Cornell University, Physics Department, Cornell University, Department of Physics, Cornell University

  • Jesse H. Goldberg

    Department of Neurobiology and Behavior, Cornell University