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Predictive modular neural networks for unsupervised segmentation of switching time series: the data allocation problem

机译:预测模块化神经网络,用于无监督地切换时间序列:数据分配问题

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摘要

In this paper, we explore some aspects of the problem of online unsupervised learning of a switching time series, i.e., a time series which is generated by a combination of several alternately activated sources. This learning problem can be solved by a two-stage approach: 1) separating and assigning each incoming datum to a specific dataset (one dataset corresponding to each source) and 2) developing one model per dataset (i.e., one model per source). We introduce a general data allocation (DA) methodology, which combines the two steps into an iterative scheme: existing models compete for the incoming data; data assigned to each model are used to refine the model. We distinguish between two modes of DA: in parallel DA, every incoming datablock is allocated to the model with lowest prediction error; in serial DA, the incoming datablock is allocated to the first model with prediction error below a prespecified threshold. We present sufficient conditions for asymptotically correct allocation of the data. We also present numerical experiments to support our theoretical analysis.
机译:在本文中,我们探讨了切换时间序列(即由多个交替激活的源的组合生成的时间序列)的在线无监督学习问题的某些方面。该学习问题可以通过两步法解决:1)将每个传入的数据分离并分配给特定的数据集(每个数据源对应一个数据集),以及2)每个数据集开发一个模型(即每个数据源一个模型)。我们介绍一种通用的数据分配(DA)方法,该方法将两个步骤组合成一个迭代方案:现有模型竞争输入数据;分配给每个模型的数据用于完善模型。我们区分DA的两种模式:在并行DA中,每个传入的数据块都分配给预测误差最小的模型。在串行DA中,输入数据块被分配给预测误差低于预定阈值的第一模型。我们提出了渐近正确分配数据的充分条件。我们还提出了数值实验来支持我们的理论分析。

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