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Streaming chunk incremental learning for class-wise data stream classification with fast learning speed and low structural complexity

机译:流块累计学习,具有快速学习速度和低结构复杂性的类化数据流分类

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Due to the fast speed of data generation and collection from advanced equipment, the amount of data obviously overflows the limit of available memory space and causes difficulties achieving high learning accuracy. Several methods based on discard-after-learn concept have been proposed. Some methods were designed to cope with a single incoming datum but some were designed for a chunk of incoming data. Although the results of these approaches are rather impressive, most of them are based on temporally adding more neurons to learn new incoming data without any neuron merging process which can obviously increase the computational time and space complexities. Only online versatile elliptic basis function (VEBF) introduced neuron merging to reduce the space-time complexity of learning only a single incoming datum. This paper proposed a method for further enhancing the capability of discard-after-learn concept for streaming data-chunk environment in terms of low computational time and neural space complexities. A set of recursive functions for computing the relevant parameters of a new neuron, based on statistical confidence interval, was introduced. The newly proposed method, named streaming chunk incremental learning (SCIL), increases the plasticity and the adaptabilty of the network structure according to the distribution of incoming data and their classes. When being compared to the others in incremental-like manner, based on 11 benchmarked data sets of 150 to 581,012 samples with attributes ranging from 4 to 1,558 formed as streaming data, the proposed SCIL gave better accuracy and time in most data sets.
机译:由于数据生成快速和从先进设备的集合,数据量显然溢出了可用内存空间的极限,并导致实现高学习精度的困难。已经提出了基于丢弃后遗迹的几种方法。一些方法旨在应对单个传入数据库,但有些是用于块的传入数据。虽然这些方法的结果相当令人印象深刻,但大多数是基于在时间上添加更多神经元来学习新的进入数据而没有任何神经元合并过程,可以显然增加计算时间和空间复杂性。只有在线多功能椭圆形基函数(VEBF)引入了神经元合并,以降低仅限学习的空间复杂性。本文提出了一种进一步提高学习后的遗传能力的方法,以便在低计算时间和神经空间复杂性方面丢弃数据块环境。介绍了一组用于计算新神经元的相关参数的递归功能,基于统计置信区间。新的方法命名为流块增量学习(SCIL),根据传入数据及其类的分布增加了网络结构的可塑性和适应性。当与其他方式以增量的方式进行比较时,基于150到581,012个样本的11个基准数据集,该属性范围为4到1,558作为流数据,所提出的SCIL在大多数数据集中提供了更好的准确度和时间。

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