发明名称 METHODS AND APPARATUS FOR SPIKING NEURAL COMPUTATION
摘要 Certain aspects of the present disclosure provide methods and apparatus for spiking neural computation of general linear systems. One example aspect is a neuron model that codes information in the relative timing between spikes. However, synaptic weights are unnecessary. In other words, a connection may either exist (significant synapse) or not (insignificant or non-existent synapse). Certain aspects of the present disclosure use binary-valued inputs and outputs and do not require post-synaptic filtering. However, certain aspects may involve modeling of connection delays (e.g., dendritic delays). A single neuron model may be used to compute any general linear transformation x = AX + BU to any arbitrary precision. This neuron model may also be capable of learning, such as learning input delays (e.g., corresponding to scaling values) to achieve a target output delay (or output value). Learning may also be used to determine a logical relation of causal inputs.
申请公布号 WO2013119867(A1) 申请公布日期 2013.08.15
申请号 WO2013US25219 申请日期 2013.02.07
申请人 QUALCOMM INCORPORATED 发明人 HUNZINGER, JASON FRANK;APARIN, VLADIMIR
分类号 G06N3/04;G06N3/08 主分类号 G06N3/04
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