论文标题

增强尖峰的突触学习

Synaptic Learning with Augmented Spikes

论文作者

Yu, Qiang, Song, Shiming, Ma, Chenxiang, Pan, Linqiang, Tan, Kay Chen

论文摘要

传统的神经元模型使用模拟值进行信息表示和计算,而尖峰的尖峰则使用。凭借更类似大脑的处理范式,尖峰神经元对于提高效率和计算能力的提高更有希望。他们扩展了传统神经元的计算,并通过全或全部尖峰携带的时间额外的时间。一个可以从模拟值的准确性和峰值的时间处理能力中受益吗?在本文中,我们介绍了一个增强尖峰的概念,除了尖峰潜伏期外,还携带具有尖峰系数的互补信息。提出了新的增强尖峰神经元模型和突触学习规则,以处理和学习增强尖峰的模式。我们提供对方法的属性和特征的系统洞察力,包括增强尖峰模式的分类,学习能力,因果关系的构建,功能检测,鲁棒性和适用于诸如声学和视觉模式识别等实用任务的适用性。显着的结果突出了我们方法的有效性和潜在优势。重要的是,我们的增强方法具有多功能性,可以轻松地将基于尖峰的系统推广到包括神经形态计算在内的潜在发展。

Traditional neuron models use analog values for information representation and computation, while all-or-nothing spikes are employed in the spiking ones. With a more brain-like processing paradigm, spiking neurons are more promising for improvements on efficiency and computational capability. They extend the computation of traditional neurons with an additional dimension of time carried by all-or-nothing spikes. Could one benefit from both the accuracy of analog values and the time-processing capability of spikes? In this paper, we introduce a concept of augmented spikes to carry complementary information with spike coefficients in addition to spike latencies. New augmented spiking neuron model and synaptic learning rules are proposed to process and learn patterns of augmented spikes. We provide systematic insight into the properties and characteristics of our methods, including classification of augmented spike patterns, learning capacity, construction of causality, feature detection, robustness and applicability to practical tasks such as acoustic and visual pattern recognition. The remarkable results highlight the effectiveness and potential merits of our methods. Importantly, our augmented approaches are versatile and can be easily generalized to other spike-based systems, contributing to a potential development for them including neuromorphic computing.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源