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Hierarchical Fusion Evolving Spiking Neural Network for Adaptive Learning

机译:适应性学习的分层融合尖刺神经网络

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A majority of machine learning (ML) approaches functions in offline or batch modes, which limits their application to adaptive environments. Thus, developing algorithms that work in adaptive and dynamic environments is the subject of ongoing research. Such algorithms require to learn not only from new samples (online learning), but also from novel and unseen before knowledge. Here, we introduce the term evolving learning (EL) to refer to learning from new knowledge and unseen-before classes without needing to re-train models as in traditional ML methods. To achieve the goal of EL, we adopt a biologically-inspired paradigm to build a highly adaptive supervised learning algorithm based on two brain-like information processing: divide-and-conquer and hierarchical abstraction. Furthermore, our proposed algorithm, which we named it as Hierarchical Fusion Evolving Spiking Neural Network (HFSNN), uses a dynamical and biologically inspired spiking neural network (SNN) with the optimized neural model. HFSNN does not impose any limitation on the data regarding the number of classes or the way of feeding the data to the model. Our testing results show a proof-of-concept of HFSNN learning in offline, online and evolving learning mods and establish for future applications for EL.
机译:大多数机器学习(ML)在离线或批处理模式下接近函数,这将其应用于自适应环境。因此,在适应性和动态环境中工作的开发算法是正在进行的研究的主题。这种算法不仅需要了解新样本(在线学习),而且还要在知识之前从新颖和看不见者中学习。在这里,我们介绍了演变的学习(EL)的术语,参考从新知识和看不见的课程中学习,而无需重新列车模型,如传统的ML方法。为了实现EL的目标,我们采用了一种生物学 - 灵感的范式来构建基于两个大脑信息处理的高度适应性的监督学习算法:划分和征服和分级抽象。此外,我们所提出的算法,我们将其命名为等级融合的尖刺神经网络(HFSNN),使用具有优化神经模型的动态和生物学激发的尖峰神经网络(SNN)。 HFSNN不会对关于类数量的数据或将数据馈送到模型的方式施加任何限制。我们的测试结果显示了HFSNN学习的验证,在线,在线和不断发展的学习模式,并建立了EL的未来应用。

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