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Machine Learning Approaches for Time-Series Data Based on Self-Organizing Incremental Neural Network

机译:基于自组织增量神经网络的时间序列数据机器学习方法

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In this paper, we introduce machine learning algorithms of time-series data based on Self-organizing Incremental Neural Network (SOINN). SOINN is known as a powerful tool for incremental unsuper-vised clustering. Using a similarity threshold based and a local error-based insertion criterion, it is able to grow incrementally and to accommodate input patterns of on-line non-stationary data distribution. These advantages of SOINN are available for modeling of time-series data. Firstly, we explain an on-line supervised learning approach, SOINN-DTW, for recognition of time-series data that are based on Dynamic Time Warping (DTW). Second, we explain an incremental clustering approach, Hidden-Markov-Model Based SOINN (HBSOINN), for time-series data. This paper summarizes SOINN based time-series modeling approaches (SOINN-DTW, HBSOINN) and the advantage of SOINN-based time-series modeling approaches compared to traditional approaches such as HMM.
机译:在本文中,我们介绍了基于自组织增量神经网络(SOINN)的时间序列数据的机器学习算法。 SOINN被称为用于无监督增量式群集的强大工具。使用基于相似性阈值和基于本地错误的插入标准,它能够逐渐增长并适应在线非平稳数据分布的输入模式。 SOINN的这些优点可用于对时间序列数据进行建模。首先,我们介绍一种在线监督学习方法SOINN-DTW,用于识别基于动态时间规整(DTW)的时间序列数据。其次,我们为时间序列数据解释了一种增量聚类方法,即基于隐马尔可夫模型的SOINN(HBSOINN)。本文总结了基于SOINN的时间序列建模方法(SOINN-DTW,HBSOINN),以及与传统方法(如HMM)相比,基于SOINN的时间序列建模方法的优势。

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