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Exploiting the stimuli encoding scheme of evolving Spiking Neural Networks for stream learning

机译:利用刺激尖刺神经网络的刺激编码方案进行流学习

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Stream data processing has lately gained momentum with the arrival of new Big Data scenarios and applications dealing with continuously produced information flows. Unfortunately, traditional machine learning algorithms are not prepared to tackle the specific challenges imposed by data stream processing, such as the need for learning incrementally, limited memory and processing time requirements, and adaptation to non-stationary data, among others. To face these paradigms, Spiking Neural Networks have emerged as one of the most promising stream learning techniques, with variants such as Evolving Spiking Neural Networks capable of efficiently addressing many of these challenges. Interestingly, these networks resort to a particular population encoding scheme - Gaussian Receptive Fields - to transform the incoming stimuli into temporal spikes. The study presented in this manuscript sheds light on the predictive potential of this encoding scheme, focusing on how it can be applied as a computationally lightweight, model-agnostic preprocessing step for data stream learning. We provide informed intuition to unveil under which circumstances the aforementioned population encoding method yields effective prediction gains in data stream classification with respect to the case where no preprocessing is performed. Results obtained for a variety of stream learning models and both synthetic and real stream datasets are discussed to empirically buttress the capability of Gaussian Receptive Fields to boost the predictive performance of stream learning methods, spanning further research towards extrapolating our findings to other machine learning problems. (C) 2019 Elsevier Ltd. All rights reserved.
机译:流数据处理最近获得了新的大数据场景和处理持续产生的信息流的应用程序的势头。不幸的是,传统的机器学习算法不准备解决数据流处理所施加的特定挑战,例如对逐步学习的需要,有限的存储器和处理时间要求,以及适应非静止数据等。为了面对这些范式,尖峰神经网络被出现为最有前途的流学习技术之一,具有变体,例如不断发展的尖刺神经网络,能够有效地解决许多这些挑战。有趣的是,这些网络诉诸特定人口编码方案 - 高斯接受领域 - 将进入的刺激转变为颞尖端。在此稿件中提出的研究阐明了这种编码方案的预测潜力,专注于如何将其作为数据流学习应用于计算的轻量级,模型 - 不可止液预处理步骤。我们提供了通知的直觉,在这种情况下,上述群体编码方法在数据流分类中产生有效的预测增益,在不进行预处理的情况下。讨论了各种流学习模型和合成和实际流数据集获得的结果,以经验支持高斯接收领域的能力,以提高流学习方法的预测性能,跨越进一步研究将我们的研究结果推断到其他机器学习问题。 (c)2019年elestvier有限公司保留所有权利。

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