Ojeda, CésarCésarOjedaGeorgiev, BogdanBogdanGeorgievCvejoski, KostadinKostadinCvejoskiSchücker, JannisJannisSchückerBauckhage, ChristianChristianBauckhageSánchez, Ramsés J.Ramsés J.Sánchez2022-11-282022-11-282021-05-05https://publica.fraunhofer.de/handle/publica/41140610.1109/ICPR48806.2021.9412566The problem of uncovering different dynamical regimes is of pivotal importance in time series analysis. Switching dynamical systems provide a solution for modeling physical phenomena whose time series data exhibit different dynamical modes. In this work we propose a novel variational RNN model for switching dynamics allowing for both non-Markovian and nonlinear dynamical behavior between and within dynamic modes. Attention mechanisms are provided to inform the switching distribution. We evaluate our model on synthetic and empirical datasets of diverse nature and successfully uncover different dynamical regimes and predict the switching dynamics.entime series analysisneural networksswitchespredictive modelsdata modelspattern recognitiondynamical systemNeural Netsnonlinear dynamical systemsrecurrent neural networkstime series005006629Switching Dynamical Systems with Deep Neural Networksconference paper