Effectiveness of artificial neural networks adaptation according to time period of training data acquisition

A. Horzyk, E. Dudek-Dyduch
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引用次数: 4

Abstract

Artificial neural networks (ANNs) were inspired by natural neural networks (NNNs) and natural processes of training. The NNNs receive data in time still tuning the inner model of the surrounding world. These valuable features of our brains let us to dynamically accommodate themselves to the changes surround. These features make us possible to forget some irrelevant information, correct our knowledge and meet truth. ANNs usually work on the training data (TD) acquired in the past and totally known at the beginning of the adaptation process. Because of this the adaptation methods of the ANNs can be sometimes more effective than the natural training process observed in the NNNs. This paper discusses the ability of ANNs to adapt more effectively than NNNs do if only the TD is completely given at the beginning of the adaptation process. In this case the adaptation process of ANNs can be divided into two steps: analyze or examining the set of TD and construction of neural network topology and weights computation. Two different applications areas of such approach are presented in the paper.
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人工神经网络根据训练数据采集时间周期自适应的有效性
人工神经网络(ANNs)的灵感来源于自然神经网络(NNNs)和自然训练过程。神经网络及时接收数据,仍然对周围世界的内部模型进行调整。我们大脑的这些有价值的特征使我们能够动态地适应周围的变化。这些特点使我们有可能忘记一些不相关的信息,纠正我们的知识和满足真理。人工神经网络通常在过去获得的训练数据(TD)上工作,并且在适应过程开始时完全已知。正因为如此,人工神经网络的自适应方法有时会比在人工神经网络中观察到的自然训练过程更有效。本文讨论了在自适应过程开始时仅给出TD的情况下,人工神经网络比神经网络更有效的自适应能力。在这种情况下,人工神经网络的自适应过程可以分为两个步骤:分析或检查TD集,构建神经网络拓扑和权重计算。本文介绍了这种方法的两个不同的应用领域。
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