Liwen Wang, Yongda Wang, Shifeng Xiong, Jiankui Yang
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引用次数: 0
摘要
本文讨论了主曲线框架内的非线性降维问题。我们将降维问题表述为估计无噪声和噪声情况下的主子空间问题,并提出了相应的迭代算法,对现有的主曲线算法进行了修改。我们引入了 R 平方准则来估计主子空间的维度。此外,我们还基于降维算法提出了新的回归和密度估计策略。理论分析和数值实验表明了所提方法的有效性。
Some aspects of nonlinear dimensionality reduction
In this paper we discuss nonlinear dimensionality reduction within the framework of principal curves. We formulate dimensionality reduction as problems of estimating principal subspaces for both noiseless and noisy cases, and propose the corresponding iterative algorithms that modify existing principal curve algorithms. An R squared criterion is introduced to estimate the dimension of the principal subspace. In addition, we present new regression and density estimation strategies based on our dimensionality reduction algorithms. Theoretical analyses and numerical experiments show the effectiveness of the proposed methods.
期刊介绍:
Computational Statistics (CompStat) is an international journal which promotes the publication of applications and methodological research in the field of Computational Statistics. The focus of papers in CompStat is on the contribution to and influence of computing on statistics and vice versa. The journal provides a forum for computer scientists, mathematicians, and statisticians in a variety of fields of statistics such as biometrics, econometrics, data analysis, graphics, simulation, algorithms, knowledge based systems, and Bayesian computing. CompStat publishes hardware, software plus package reports.