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Combining MLP and RBF Neural Networks for Novelty Detection in Short Time Series

机译:结合MLP和RBF神经网络在短时间内进行新奇检测

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Novelty detection in time series is an important problem with application in different domains such as machine failure detection, fraud detection and auditing. In many problems, the occurrence of short length time series is a frequent characteristic. In previous works we have proposed a novelty detection approach for short time series that uses RBF neural networks to classify time series windows as normal or novelty. Additionally, both normal and novelty random patterns are added to training sets to improve classification performance. In this work we consider the use of MLP networks as classifiers. Next, we analyze (a) the impact of validation and training sets generation, and (b) of the training method. We have carried out a number of experiments using four real-world time series, whose results have shown that under a good selection of these alternatives, MLPs perform better than RBFs. Finally, we discuss the use of MLP and MLP/RBF committee machines in conjunction with our previous method. Experimental results shows that these committee classifiers outperform single MLP and RBF classifiers.
机译:时间序列的新奇检测是在不同域中的应用中的应用程序,如机器故障检测,欺诈检测和审计。在许多问题中,短长时间序列的发生是频繁的特征。在以前的作品中,我们提出了一种新颖性的检测方法,用于短时间序列,它使用RBF神经网络将时间序列窗口分类为正常或新颖性。此外,正常和新颖性随机模式都被添加到训练集中以提高分类性能。在这项工作中,我们考虑使用MLP网络作为分类器。接下来,我们分析(a)验证和培训集的影响,(b)训练方法。我们使用了四个真实世界时间序列进行了许多实验,其结果表明,在良好选择这些替代方案下,MLP比RBF更好。最后,我们与先前的方法一起讨论使用MLP和MLP / RBF委员会机器。实验结果表明,这些委员会分类器优于单一MLP和RBF分类剂。

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