Deep Recurrent Neural Networks for Time Series Prediction
Sharat C. Prasad, Piyush Prasad

TL;DR
This paper introduces deep recurrent neural networks with extended backpropagation through time for improved modeling and prediction of high-order time series, demonstrated on epileptic seizure data with high accuracy.
Contribution
It presents a novel deep recurrent network architecture with longer backpropagation, analytical error reduction proof, and an efficient DP training method for high-order time series prediction.
Findings
Achieved over 99% average detection rate on seizure data
Demonstrated increased approximation error reduction with added layers
Validated the network's ability to learn temporal structures
Abstract
Ability of deep networks to extract high level features and of recurrent networks to perform time-series inference have been studied. In view of universality of one hidden layer network at approximating functions under weak constraints, the benefit of multiple layers is to enlarge the space of dynamical systems approximated or, given the space, reduce the number of units required for a certain error. Traditionally shallow networks with manually engineered features are used, back-propagation extent is limited to one and attempt to choose a large number of hidden units to satisfy the Markov condition is made. In case of Markov models, it has been shown that many systems need to be modeled as higher order. In the present work, we present deep recurrent networks with longer backpropagation through time extent as a solution to modeling systems that are high order and to predicting ahead. We…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Advanced Memory and Neural Computing · Neural Networks and Applications
