Neuromorphic hardware platforms, such as Intel's Loihi chip, support the implementation of Spiking Neural Networks (SNNs) as an energy-efficient alternative to Artificial Neural Networks (ANNs). SNNs are networks of neurons with internal analogue dynamics that communicate by means of binary time series. In this work, a probabilistic model is introduced for a generalized set-up in which the synaptic time series can take values in an arbitrary alphabet and are characterized by both causal and instantaneous statistical dependencies. The model, which can be considered as an extension of exponential family harmoniums to time series, is introduced by means of a hybrid directed-undirected graphical representation. Furthermore, distributed learning rules are derived for Maximum Likelihood and Bayesian criteria under the assumption of fully observed time series in the training set.
翻译:内晶硬件平台,如英特尔的Loihi芯片,支持实施Spiking神经网络(SNN),作为人工神经网络(ANNs)的一种节能替代能源。 SNNs是神经元网络的网络,具有内部模拟动态,通过二进制时间序列进行交流。在这项工作中,引入了一种普遍设置的概率模型,即合成时间序列可以任意以字母表示值,并具有因果和即时统计依赖性的特点。该模型可以被视为指数式家庭协调器向时间序列的延伸,通过一种混合的定向无方向图形代表方式引入。此外,根据培训集中完全观察的时间序列的假设,为最大近似性和巴耶斯标准制定了分布式学习规则。