Nonlinear quantization on Hebbian-type associative memories

作者:Chishyan Liaw, Ching-Tsorng Tsai, Chao-Hui Ko

摘要

Hebbian-type associative memory is characterized by its simple architecture. However, the hardware implementation of Hebbian-type associative memories is normally complicated when there are a huge number of patterns stored. To simplify the interconnection values of a network, a nonlinear quantization strategy is presented. The strategy takes into account the property that the interconnection values are Gaussian distributed, and divides the interconnection weight values into a small number of unequal ranges accordingly. Interconnection weight values in each range contain information equally and each range is quantized to a value.

论文关键词:Neuron, Interconnection, Hebbian-type associative memory, Nonlinear quantization, Probability of direct convergence

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10489-011-0299-7