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A temporal self-organizing neural network for adaptive sub-sequence clustering and case studies

机译:自适应子序列聚类的时间自组织神经网络和案例研究

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Temporal neural networks such as Temporal Kohonen Map (TKM) and Recurrent Self-Organizing Map (RSOM) are popular for their incremental and explicit learning abilities. However, for sub-sequence clustering TKM and RSOM may generate many fragments whose classification membership is hard to decide. Besides they have stability issues in multivariate time series processing because they model the historical neuron activities on each variable independently. To overcome the drawbacks, we propose an adaptive sub-sequence clustering method based on single layered Self-Organizing Incremental Neural Network (SOINN). A recurrent filter is proposed to model the quantizations of neuron activations each as a scalar instead of a vector like in TKM and RSOM. Then it is integrated with the single layered SOINN for adaptive clustering where fragmented clusters in TKM and RSOM is replaced by a smoothed clustering result. Experiments are carried out on two datasets, namely a traffic flow dataset from open Caltrans performance measurement systems and a part of the KDD Cup 99 intrusion detection dataset. Experimental results show that the proposed method outperforms the conventional methods by 21.3% and 9.1% on the two datasets respectively.
机译:时态神经网络(如时态Kohonen映射(TKM)和递归自组织映射(RSOM))因其增量式和显式学习能力而广受欢迎。但是,对于子序列聚类,TKM和RSOM可能会生成许多片段,其分类成员资格很难决定。此外,它们在多元时间序列处理中具有稳定性问题,因为它们独立地模拟了每个变量的历史神经元活动。为了克服这些缺点,我们提出了一种基于单层自组织增量神经网络(SOINN)的自适应子序列聚类方法。提出了一种循环滤波器,以将神经元激活的量化建模为标量,而不是像TKM和RSOM中那样的矢量。然后将其与单层SOINN集成以进行自适应群集,其中将TKM和RSOM中的碎片群集替换为平滑的群集结果。实验是在两个数据集上进行的,即来自开放式Caltrans性能测量系统的交通流量数据集和KDD Cup 99入侵检测数据集的一部分。实验结果表明,该方法在两个数据集上分别比常规方法优越21.3%和9.1%。

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