Radial basis function networks with quantized parameters

M. B. Lucks, N. Oki
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引用次数: 1

Abstract

A RBFN implemented with quantized parameters is proposed and the relative or limited approximation property is presented. Simulation results for sinusoidal function approximation with various quantization levels are shown. The results indicate that the network presents good approximation capability even with severe quantization. The parameter quantization decreases the memory size and circuit complexity required to store the network parameters leading to compact mixed-signal circuits proper for low-power applications.
具有量化参数的径向基函数网络
提出了一种采用量化参数实现的RBFN,并给出了其相对逼近或有限逼近的性质。给出了不同量化水平下正弦函数逼近的仿真结果。结果表明,即使在严重量化的情况下,该网络仍具有良好的逼近能力。参数量化降低了存储网络参数所需的内存大小和电路复杂性,从而使混合信号电路更紧凑,适合低功耗应用。
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