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IDEA: Intrinsic Dimension Estimation Algorithm

机译:IDEA:内在维数估计算法

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摘要

The high dimensionality of some real life signals makes the usage of the most common signal processing and pattern recognition methods unfeasible. For this reason, in literature a great deal of research work has been devoted to the development of algorithms performing dimensionality reduction. To this aim, an useful help could be provided by the estimation of the intrinsic dimensionality of a given dataset, that is the minimum number of parameters needed to capture, and describe, all the information carried by the data. Although many techniques have been proposed, most of them fail in case of noisy data or when the intrinsic dimensionality is too high. In this paper we propose a local intrinsic dimension estimator exploiting the statistical properties of data neighborhoods. The algorithm evaluation on both synthetic and real datasets, and the comparison with state of the art algorithms, proves that the proposed technique is promising.
机译:某些现实生活中信号的高维度使得使用最常见的信号处理和模式识别方法不可行。由于这个原因,在文献中大量研究工作致力于执行降维的算法的开发。为此,可以通过估计给定数据集的固有维数(即捕获和描述数据所携带的所有信息所需的最少参数数量)来提供有用的帮助。尽管已经提出了许多技术,但大多数技术在数据嘈杂或固有维数过高的情况下会失败。在本文中,我们提出了一个利用数据邻域的统计特性的局部固有维估计器。综合和真实数据集上的算法评估,以及与最新算法的比较,证明了所提出的技术是有前途的。

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