عنوان مقاله فارسی: مخروط: اثرات محدب بهینه-سیناپسی برای نقشه برداری دقیق اسپایک
عنوان مقاله لاتین: CONE: Convex-Optimized-Synaptic Efficacies for Temporally Precise Spike Mapping
نویسندگان: Wang Wei Lee; Sunil L. Kukreja; Nitish V. Thakor
تعداد صفحات: 12
سال انتشار: 2017
زبان: لاتین
Abstract:
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.
cone convex optimized synaptic efficacies for temporally precise spike mapping_1623058224_48902_4145_1085.zip3.04 MB |