IEEE Trans Neural Netw Learn Syst. 2012 Jan;23(1):163-8. doi: 10.1109/TNNLS.2011.2178325.
We propose kernel parallel analysis (kPA) for automatic kernel scale and model order selection in Gaussian kernel principal component analysis (KPCA). Parallel analysis is based on a permutation test for covariance and has previously been applied for model order selection in linear PCA, we here augment the procedure to also tune the Gaussian kernel scale of radial basis function based KPCA. We evaluate kPA for denoising of simulated data and the U.S. postal data set of handwritten digits. We find that kPA outperforms other heuristics to choose the model order and kernel scale in terms of signal-to-noise ratio of the denoised data.
我们提出了核并行分析(kPA),用于在高斯核主成分分析(KPCA)中自动选择核尺度和模型阶数。并行分析基于协方差的置换检验,以前曾应用于线性 PCA 中的模型阶数选择,我们在此将该过程扩展到调整基于径向基函数的高斯核尺度的 KPCA。我们评估 kPA 对模拟数据和手写数字的美国邮政数据集的去噪效果。我们发现,在去噪数据的信噪比方面,kPA 优于其他选择模型阶数和核尺度的启发式方法。