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 dynamical systems with event based outputs, such as spiking neural networks and other continuous time threshold crossing systems, this optimality criterion is inapplicable due to the strong temporal correlations in their input and output. We introduce a novel extension of the static SVMs - The Temporal Support Vector Machine (T-SVM). The T-SVM finds a solution that maximizes a new construct - the dynamical margin. We show that T-SVM and its kernel extensions generate robust synaptic weight vectors in spiking neurons and enable their learning of tasks that require nonlinear spatial integration of synaptic inputs. We propose T-SVM with nonlinear kernels as a new model of the computational role of the nonlinearities and extensive morphologies of neuronal dendritic trees.
翻译:当神经电路学会执行某项任务时,经常出现这样的情况:有很多与任务一致的神经神经同步连接。然而,只有少量可能的解决方案对输入中的噪音具有很强的力度,能够将其工作表现概括化为新的投入。找到这样的好解决方案是学习一般神经电路特别是神经电路的一个重要目标。对于使用静态投入和输出的系统来说,一个众所周知的解决问题的方法是支持矢量机(SVM)等大型边距方法。通过最大限度地扩大数据矢量与决定表面的距离,这些解决方案对噪音和增强的概括能力具有更大的活力。此外,使用内核方法使SVMMS能够执行需要非线性决定表面的分类任务。然而,对于具有基于事件输出的动态系统,例如神经网络和其他连续时间阈值跨系统,由于在输入和输出中具有很强的时间相关性,这一最佳性标准是不适用的。我们引入了静态的SVMTS级矢量矢量非量值的强度和增强的概括能力能力。此外,STVMS的温度支持性电路路段的不力计算系统将产生一个动态扩展解决方案。