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Power Amplifier Behavioral Model Dimension Pruning Using Sparse Principal Component Analysis

机译:基于稀疏主成分分析的功率放大器行为模型维度修剪

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In this paper, an efficient data dimension reduction method which uses sparse principal component analysis (SPCA) is presented for reducing the dimensions of power amplifier (PA) behavioral models. Unlike other model pruning techniques, the SPCA method reduces the data dimension by projecting the variables to a new low dimensional coordinate system while minimizing the model information loss. Meanwhile, the norm L2 and L1 are used as constraint and penalty factor to acquire sparse loadings, which can overcome the non-zero loadings disadvantage of ordinary PCA method and reduce the computational complexity in extracting principal components. Experiment results show that the coefficients of the sparse model can be decreased dramatically using the SPCA method, but almost have the same model performance with the full model.
机译:本文提出了一种有效的数据降维方法,该方法使用稀疏主成分分析(SPCA)来减小功率放大器(PA)行为模型的尺寸。与其他模型修剪技术不同,SPCA方法通过将变量投影到新的低维坐标系来减少数据维,同时最大程度地减少了模型信息丢失。同时,规范L 2 和我 1 用约束和惩罚因子来获取稀疏载荷,可以克服普通PCA方法的非零载荷缺点,降低提取主成分时的计算复杂度。实验结果表明,使用SPCA方法可以显着降低稀疏模型的系数,但与完整模型几乎具有相同的模型性能。

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