NEApr 30, 2018

Optimal Neural Network Feature Selection for Spatial-Temporal Forecasting

arXiv:1804.11129v18 citations
Originality Incremental advance
AI Analysis

This provides a method for improving forecasting accuracy in spatial-temporal domains, but it is incremental as it builds on existing dynamical systems theory.

The paper tackled the problem of constructing optimal feature selection for neural networks in spatial-temporal forecasting, showing that an input representation based on nonlinear embedding theorems is optimal or near-optimal across four systems, including simulations and real sunspot data.

In this paper, we show empirical evidence on how to construct the optimal feature selection or input representation used by the input layer of a feedforward neural network for the propose of forecasting spatial-temporal signals. The approach is based on results from dynamical systems theory, namely the non-linear embedding theorems. We demonstrate it for a variety of spatial-temporal signals, with one spatial and one temporal dimensions, and show that the optimal input layer representation consists of a grid, with spatial/temporal lags determined by the minimum of the mutual information of the spatial/temporal signals and the number of points taken in space/time decided by the embedding dimension of the signal. We present evidence of this proposal by running a Monte Carlo simulation of several combinations of input layer feature designs and show that the one predicted by the non-linear embedding theorems seems to be optimal or close of optimal. In total we show evidence in four unrelated systems: a series of coupled Henon maps; a series of couple Ordinary Differential Equations (Lorenz-96) phenomenologically modelling atmospheric dynamics; the Kuramoto-Sivashinsky equation, a partial differential equation used in studies of instabilities in laminar flame fronts and finally real physical data from sunspot areas in the Sun (in latitude and time) from 1874 to 2015.

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