Neural network models for anytime use

A. Várkonyi-Kóczy
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引用次数: 1

Abstract

Nowadays, the role of anytime and situational models and algorithms has become important because they offer a way to handle atypical situations and to overcome problems of resource, time, and data insuffiency in changing and time-critical systems and situations. Soft computing, in particular fuzzy and neural network based models are serious candidates for usage in such systems, however their high complexity, and in some cases unknown accuracy, can limit their applicability. In this paper, special neural network structures are introduced which (1) complexity can adaptively be chosen according to the temporal situation (resource, time, and data availability), (2) the accuracy is always known, and (3) monotonously decreases parallel with the increase of the complexity of the used model/algorithm.
神经网络模型随时使用
如今,随时和情景模型和算法的作用变得非常重要,因为它们提供了一种处理非典型情况的方法,并克服了变化和时间关键型系统和情况中资源、时间和数据不足的问题。软计算,特别是基于模糊和神经网络的模型,是在此类系统中使用的重要候选者,然而它们的高复杂性,以及在某些情况下未知的准确性,限制了它们的适用性。本文介绍了一种特殊的神经网络结构,它可以根据时间(资源、时间和数据可用性)自适应选择复杂度,精度始终是已知的,并且随着所用模型/算法复杂度的增加而单调降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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