| タイトル | Bio-Inspired Neural Model for Learning Dynamic Models |
| 本文(外部サイト) | http://hdl.handle.net/2060/20090027773 |
| 著者(英) | Duong, Tuan; Suri, Ronald; Duong, Vu |
| 著者所属(英) | California Inst. of Tech. |
| 発行日 | 2009-07-01 |
| 言語 | eng |
| 内容記述 | A neural-network mathematical model that, relative to prior such models, places greater emphasis on some of the temporal aspects of real neural physical processes, has been proposed as a basis for massively parallel, distributed algorithms that learn dynamic models of possibly complex external processes by means of learning rules that are local in space and time. The algorithms could be made to perform such functions as recognition and prediction of words in speech and of objects depicted in video images. The approach embodied in this model is said to be "hardware-friendly" in the following sense: The algorithms would be amenable to execution by special-purpose computers implemented as very-large-scale integrated (VLSI) circuits that would operate at relatively high speeds and low power demands. |
| NASA分類 | Cybernetics, Artificial Intelligence and Robotics |
| レポートNO | NPO-41691 |
| 権利 | Copyright, Distribution as joint owner in the copyright |
| URI | https://repository.exst.jaxa.jp/dspace/handle/a-is/509378 |