Nikolaev Nikolay Y, Iba Hitoshi
Dept. of Math. and Computing Sciences, Goldsmiths College, University of London, New Cross, London SE14 6NW United Kingdom.
Int J Neural Syst. 2002 Oct;12(5):399-410. doi: 10.1142/S0129065702001242.
This paper presents a genetic programming system that evolves polynomial harmonic networks. These are multilayer feed-forward neural networks with polynomial activation functions. The novel hybrids assume that harmonics with non-multiple frequencies may enter as inputs the activation polynomials. The harmonics with non-multiple, irregular frequencies are derived analytically using the discrete Fourier transform. The polynomial harmonic networks have tree-structured topology which makes them especially suitable for evolutionary structural search. Empirical results show that this hybrid genetic programming system outperforms an evolutionary system manipulating polynomials, the traditional Koza-style genetic programming, and the harmonic GMDH network algorithm on processing time series.
本文提出了一种进化多项式谐波网络的遗传编程系统。这些是具有多项式激活函数的多层前馈神经网络。这种新型混合模型假设具有非倍频的谐波可以作为激活多项式的输入。利用离散傅里叶变换解析得出具有非倍频、不规则频率的谐波。多项式谐波网络具有树状结构拓扑,这使得它们特别适合于进化结构搜索。实证结果表明,在处理时间序列时,这种混合遗传编程系统优于操纵多项式的进化系统、传统的科扎式遗传编程以及谐波GMDH网络算法。