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首页> 外文期刊>Science in China. Series F, Information Sciences >Fast adaptive principal component extraction based on a generalized energy function
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Fast adaptive principal component extraction based on a generalized energy function

机译:基于广义能量函数的快速自适应主成分提取

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By introducing an arbitrary diagonal matrix, a generalized energy function (CEF) is proposed for searching for the optimum weights of a two layer linear neural network. From the CEF, we derive a recursive least squares (RLS) algorithm to extract in parallel multiple principal components of the input covari-ance matrix without designing an asymmetrical circuit. The local stability of the GEF algorithm at the equilibrium is analytically verified. Simulation results show that the CEF algorithm for parallel multiple principal components extraction exhibits the fast convergence and has the improved robustness resistance to the eigenvalue spread of the input covariance matrix as compared to the well-known lateral inhibition model (APEX) and least mean square error reconstruction (LMSER) algorithms.
机译:通过引入任意对角矩阵,提出了一种广义能量函数(CEF)来寻找两层线性神经网络的最优权重。从CEF中,我们导出了一种递归最小二乘(RLS)算法,可在不设计不对称电路的情况下并行提取输入协方差矩阵的多个主分量。通过分析验证了GEF算法在平衡状态下的局部稳定性。仿真结果表明,与众所周知的横向抑制模型(APEX)和最小均方误差相比,用于并行多主成分提取的CEF算法具有快速收敛性,并且对输入协方差矩阵的特征值扩展具有更高的鲁棒性。重建(LMSER)算法。

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