Neural Net Architectures for Temporal Sequence Processing (1994)
| Citations: | 103 - 0 self |
BibTeX
@INPROCEEDINGS{Mozer94neuralnet,
author = {Michael C. Mozer},
title = {Neural Net Architectures for Temporal Sequence Processing},
booktitle = {},
year = {1994},
pages = {243--264},
publisher = {Addison-Wesley}
}
Years of Citing Articles
OpenURL
Abstract
I present a general taxonomy of neural net architectures for processing time-varying patterns. This taxonomy subsumes many existing architectures in the literature, and points to several promising architectures that have yet to be examined. Any architecture that processes timevarying patterns requires two conceptually distinct components: a short-term memory that holds on to relevant past events and an associator that uses the short-term memory to classify or predict. My taxonomy is based on a characterization of short-term memory models along the dimensions of form, content, and adaptability. Experiments on predicting future values of a financial time series (US dollar--Swiss franc exchange rates) are presented using several alternative memory models. The results of these experiments serve as a baseline against which more sophisticated architectures can be compared. Neural networks have proven to be a promising alternative to traditional techniques for nonlinear temporal prediction t...







