Cubic Spline Smoothing Compensation for Irregularly Sampled Sequences

10/03/2020
by   Jing Shi, et al.
7

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.

READ FULL TEXT

page 7

page 8

research
12/30/2021

Fast algorithms for interpolation with L-splines for differential operators L of order 4 with constant coefficients

In the classical theory of cubic interpolation splines there exists an a...
research
12/15/2020

Quartic L^p-convergence of cubic Riemannian splines

We prove quartic convergence of cubic spline interpolation for curves in...
research
02/09/2019

Contextual Recurrent Neural Networks

There is an implicit assumption that by unfolding recurrent neural netwo...
research
11/23/2019

Low Rank Approximation for Smoothing Spline via Eigensystem Truncation

Smoothing splines provide a powerful and flexible means for nonparametri...
research
04/18/2018

A Min.Max Algorithm for Spline Based Modeling of Violent Crime Rates in USA

This paper focuses on modeling violent crime rates against population ov...
research
06/24/2020

Neural Splines: Fitting 3D Surfaces with Infinitely-Wide Neural Networks

We present Neural Splines, a technique for 3D surface reconstruction tha...
research
03/07/2022

Zero-delay Consistent and Smooth Trainable Interpolation

The question of how to produce a smooth interpolating curve from a strea...

Please sign up or login with your details

Forgot password? Click here to reset