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A global structure-based algorithm for detecting the principal graph from complex data

机译:一种基于全局结构的从复杂数据中检测主图的算法

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摘要

Principal curves arising as an essential construct in dimensionality reduction and pattern recognition have recently attracted much attention from theoretical as well as practical perspective. Existing methods usually employ the first principal component of the data as an initial estimate of principal curves. However, they may be ineffective when dealing with complex data with self-intersecting characteristics, high curvature, and significant dispersion. In this paper, a new method based on global structure is proposed to detect the principal graph - a set of principal curves from complex data. First, the global structure of the data, called an initial principal graph, is extracted based on a thinning technique, which captures the approximate topological features of the complex data. In terms of the characteristics of the data, vertex-merge step and the improved fitting-and-smoothing phase are then proposed to control the deviation of the principal graph and improve the process of optimizing the principal graph. Finally, the restructuring step introduced by Kégl is used to rectify imperfections of the principal graph. By using synthetic and real-world data sets, the proposed method is compared with other existing algorithms. Experimental results show the effectiveness of the global structure based method.
机译:从理论和实践的角度来看,作为降维和模式识别中必不可少的构造的主要曲线最近引起了很多关注。现有方法通常使用数据的第一主成分作为主曲线的初始估计。但是,当处理具有自相交特征,高曲率和明显分散的复杂数据时,它们可能无效。本文提出了一种基于全局结构的检测主图的新方法-从复杂数据中检测出一组主曲线。首先,基于细化技术提取数据的全局结构(称为初始主图),该技术捕获复杂数据的近似拓扑特征。针对数据的特点,提出了顶点合并步骤和改进的平滑拟合阶段,以控制主图的偏差,改善主图的优化过程。最后,使用Kégl引入的重组步骤来纠正主图的缺陷。通过使用合成的和真实的数据集,该方法与其他现有算法进行了比较。实验结果证明了基于全局结构的方法的有效性。

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