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Dimensionality Reduction in Nonlinear Optical Datasets via Diffusion Mapping: Case Study of Short-Pulse Second Harmonic Generation

机译:通过扩散测绘的非线性光学数据集的维度减少:短脉冲二次谐波产生的情况研究

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We have studied the application of the diffusion mapping technique to dimensionality reduction and clustering in multidimensional optical datasets. The combinational (input-output) data were obtained by sampling search spaces related to optimization of a nonlinear physical process, short-pulse second harmonic generation. The diffusion mapping technique hierarchically reduces the dimensionality of the data set and unifies the statistics of input (the pulse shape) and output (the integral output intensity) parameters. The information content of the emerging clustered pattern can be optimized by modifying the parameters of the mapping procedure. The low-dimensional pattern captures essential features of the nonlinear process, based on a finite sampling set. In particular, the apparently parabolic two-dimensional projection of this pattern exhibits regular evolution with the increase of higher-intensity data in the sampling set. The basic shape of the pattern and the evolution are relatively insensitive to the size of the sampling set, as well as to the details of the mapping procedure. Moreover, the experimental data sets and the sets produced numerically on the basis of a theoretical model are mapped into patterns of remarkable similarity (as quantified by the similarity of the related quadratic-form coefficients). The diffusion mapping method is robust and capable of predicting higher-intensity points from a set of low-intensity points. With these attractive features, diffusion mapping stands poised to become a helpful statistical tool for preprocessing analysis of vast and multidimensional combinational optical datasets.
机译:我们研究了扩散映射技术来降维聚类和在多维数据集光学应用。的组合(输入 - 输出)数据通过采样相关的非线性的物理过程的优化,短脉冲产生二次谐波的搜索空间获得。扩散映射技术分层降低数据集的维数,并统一输入(脉冲形状)和输出的统计量(积分输出强度)的参数。新兴的群集图案的信息内容可以通过修改映射过程的参数进行优化。低维图案捕获非线性处理的必要特征,基于有限采样集。特别地,该图案的明显抛物线二维投影显示出具有更高的强度数据中的采样集的增加规则进化。图案和演变的基本形状是相对不敏感的采样集的大小,以及所述映射步骤的细节。此外,实验数据集和一个理论模型的基础上产生的数值组被映射到显着的相似的模式(如由相关的二次形式的系数的量化的相似性)。扩散映射方法是健壮的,并且能够从一组低强度点预测更高强度的点。有了这些吸引人的特点,扩散映射看台有望成为广大预处理和多维组合的光学数据集进行分析的有用的统计工具。

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