Temporal support vectors for spiking neuronal networks
Ran Rubin, Haim Sompolinsky

TL;DR
This paper introduces the Temporal Support Vector Machine (T-SVM), an extension of static SVMs for dynamical systems like spiking neural networks, to find robust solutions that generalize well despite temporal correlations.
Contribution
The paper proposes T-SVM, a novel method that maximizes a dynamical margin for event-based systems, enabling robust learning in spiking neural networks with nonlinear dendritic processing.
Findings
T-SVM generates robust synaptic weight vectors.
T-SVM enables learning of nonlinear spatial integration tasks.
Kernel extensions of T-SVM improve classification in spiking neurons.
Abstract
When neural circuits learn to perform a task, it is often the case that there are many sets of synaptic connections that are consistent with the task. However, only a small number of possible solutions are robust to noise in the input and are capable of generalizing their performance of the task to new inputs. Finding such good solutions is an important goal of learning systems in general and neuronal circuits in particular. For systems operating with static inputs and outputs, a well known approach to the problem is the large margin methods such as Support Vector Machines (SVM). By maximizing the distance of the data vectors from the decision surface, these solutions enjoy increased robustness to noise and enhanced generalization abilities. Furthermore, the use of the kernel method enables SVMs to perform classification tasks that require nonlinear decision surfaces. However, for…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural dynamics and brain function · CCD and CMOS Imaging Sensors
