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Cubic Spline Smoothing Compensation for Irregularly Sampled Sequences (2010.01381v1)

Published 3 Oct 2020 in cs.LG and stat.ML

Abstract: The marriage of recurrent neural networks and neural ordinary differential networks (ODE-RNN) is effective in modeling irregularly-observed sequences. While ODE produces the smooth hidden states between observation intervals, the RNN will trigger a hidden state jump when a new observation arrives, thus cause the interpolation discontinuity problem. To address this issue, we propose the cubic spline smoothing compensation, which is a stand-alone module upon either the output or the hidden state of ODE-RNN and can be trained end-to-end. We derive its analytical solution and provide its theoretical interpolation error bound. Extensive experiments indicate its merits over both ODE-RNN and cubic spline interpolation.

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Authors (4)
  1. Jing Shi (123 papers)
  2. Jing Bi (26 papers)
  3. Yingru Liu (7 papers)
  4. Chenliang Xu (114 papers)

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