Title :
A recurrent multiscale architecture for long-term memory prediction task
Author :
Squartini, Stefano ; Hussain, Amir ; Piazza, Francesco
Author_Institution :
Dipt. di Elettronica e Autom., Ancona Univ., Italy
Abstract :
In the past few years, researchers have been extensively studying the application of recurrent neural networks (RNNs) to solving tasks where detection of long term dependencies is required. This paper proposes an original architecture termed the Recurrent Multiscale Network, RMN, to deal with these kinds of problems. Its most relevant properties are concerned with maintaining conventional RNNs´ capability of information storing whilst simultaneously attempting to reduce their typical drawback occurring when they are trained by gradient descent algorithms, namely the vanishing gradient effect. This is achieved through RMN which preprocesses the original signal separating information at different temporal scales through an adequate DSP tool, and handling each information level with an autonomous recurrent architecture; the final goal is achieved by a nonlinear reconstruction section. This network has shown a markedly improved generalization performance over conventional RNNs, in its application to time series prediction tasks where long range dependencies are involved.
Keywords :
discrete wavelet transforms; neural net architecture; prediction theory; recurrent neural nets; time series; DSP tool; autonomous recurrent architecture; discrete wavelet decomposition; generalization performance; gradient descent algorithms; information level; long range dependencies; long-term memory prediction task; multiband preprocessing; nonlinear reconstruction; recurrent multiscale architecture; recurrent multiscale network; recurrent neural networks; signal separating information; time series prediction; vanishing gradient effect; Computer architecture; Computer networks; Cost function; Delay effects; Digital signal processing; Discrete wavelet transforms; Information analysis; Memory architecture; Neural networks; Recurrent neural networks;
Conference_Titel :
Acoustics, Speech, and Signal Processing, 2003. Proceedings. (ICASSP '03). 2003 IEEE International Conference on
Print_ISBN :
0-7803-7663-3
DOI :
10.1109/ICASSP.2003.1202485