Time Series Pattern Recognition via SoftComputing

M. Kotyrba, Z. Oplatková, E. Volná, R. Šenkeřík, Václav Kocian, M. Janošek
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引用次数: 1

Abstract

In this paper we develop two methods that are able to analyze and recognize patterns in time series. The first model is based on analytic programming (AP), which belongs to soft computing. AP is based as well as genetic programming on the set of functions, operators and so-called terminals, which are usually constants or independent variables. The second one uses an artificial neural network that is adapted by back propagation. Artificial neural networks are suitable for pattern recognition in time series mainly because of learning only from examples. There is no need to add additional information that could bring more confusion than recognition effect. Neural networks are able to generalize and are resistant to noise. On the other hand, it is generally not possible to determine exactly what a neural network learned and it is also hard to estimate possible recognition error. They are ideal especially when we do not have any other description of the observed series. This paper also includes experimental results of time series pattern recognition carried out with both mentioned methods, which have proven their suitability for this type of problem solving.
基于软件计算的时间序列模式识别
在本文中,我们开发了两种能够分析和识别时间序列模式的方法。第一个模型基于分析规划(AP),属于软计算范畴。AP和遗传规划一样,都是基于一组函数、运算符和所谓的终端,这些终端通常是常量或自变量。第二种方法使用了一种人工神经网络,该网络通过反向传播进行自适应。人工神经网络适合于时间序列的模式识别,主要是因为它只从实例中学习。没有必要添加额外的信息,这可能会带来比识别效果更大的混乱。神经网络具有泛化能力和抗噪声能力。另一方面,通常不可能确切地确定神经网络学习了什么,也很难估计可能的识别误差。它们是理想的,特别是当我们对观测序列没有任何其他描述时。本文还包括用上述两种方法进行的时间序列模式识别的实验结果,证明了它们适合于这类问题的解决。
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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