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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >CONE: Convex-Optimized-Synaptic Efficacies for Temporally Precise Spike Mapping
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CONE: Convex-Optimized-Synaptic Efficacies for Temporally Precise Spike Mapping

机译:锥:凸优化突触功效,用于临时精确的峰值映射

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摘要

Spiking neural networks are well suited to perform time-dependent pattern recognition problems by encoding the temporal dimension in precise spike times. With an appropriate set of weights, a spiking neuron can emit precisely timed action potentials in response to spatiotemporal input spikes. However, deriving supervised learning rules for spike mapping is nontrivial due to the increased complexity. Existing methods rely on heuristic approaches that do not guarantee a convex objective function and, therefore, may not converge to a global minimum. In this paper, we present a novel technique to obtain the weights of spiking neurons by formulating the problem in a convex optimization framework, rendering it be compatible with the established methods. We introduce techniques to influence the weight distribution and membrane trajectory, and then study how these factors affect robustness in the presence of noise. In addition, we show how the existence of a solution can be determined and assess memory capacity limits of a neuron model using synthetic examples. The practical utility of our technique is further assessed by its application to gait-event detection using the experimental data.
机译:通过在精确的尖峰时间中编码时间维度,尖峰神经网络非常适合执行与时间相关的模式识别问题。通过适当的权重设置,尖峰神经元可以响应时空输入尖峰而发出精确定时的动作电位。然而,由于复杂性的增加,导出针对尖峰映射的监督学习规则并非易事。现有方法依赖于不能保证凸目标函数的启发式方法,因此可能无法收敛到全局最小值。在本文中,我们提出了一种新技术,可以通过在凸优化框架中制定问题来获得尖峰神经元的权重,使其与既定方法兼容。我们介绍了影响重量分布和膜轨迹的技术,然后研究这些因素如何在存在噪音的情况下影响坚固性。此外,我们展示了如何确定解决方案的存在并使用合成示例评估了神经元模型的存储容量限制。通过使用实验数据将其应用于步态事件检测,进一步评估了我们技术的实用性。

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