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Collapsed Amortized Variational Inference for Switching Nonlinear Dynamical Systems

About

We propose an efficient inference method for switching nonlinear dynamical systems. The key idea is to learn an inference network which can be used as a proposal distribution for the continuous latent variables, while performing exact marginalization of the discrete latent variables. This allows us to use the reparameterization trick, and apply end-to-end training with stochastic gradient descent. We show that the proposed method can successfully segment time series data, including videos and 3D human pose, into meaningful ``regimes'' by using the piece-wise nonlinear dynamics.

Zhe Dong, Bryan A. Seybold, Kevin P. Murphy, Hung H. Bui• 2019

Related benchmarks

TaskDatasetResultRank
Time-Series Segmentationbouncing ball
Accuracy0.97
3
Time-Series Segmentation3 mode system
Accuracy82
3
Time-Series Segmentationdancing bees
Accuracy44
3
Time-Series Segmentationdancing bees K=2
Accuracy63
3
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