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Intrinsic Dimension Estimation: Relevant Techniques and a Benchmark Framework

机译:内在维数估计:相关技术和基准框架

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摘要

When dealing with datasets comprising high-dimensional points, it is usually advantageous to discover some data structure. A fundamental information needed to this aim is the minimum number of parameters required to describe the data while minimizing the information loss. This number, usually called intrinsic dimension, can be interpreted as the dimension of the manifold from which the input data are supposed to be drawn. Due to its usefulness in many theoretical and practical problems, in the last decades the concept of intrinsic dimension has gained considerable attention in the scientific community, motivating the large number of intrinsic dimensionality estimators proposed in the literature. However, the problem is still open since most techniques cannot efficiently deal with datasets drawn from manifolds of high intrinsic dimension and nonlinearly embedded in higher dimensional spaces. This paper surveys some of the most interesting, widespread used, and advanced state-of-the-art methodologies. Unfortunately, since no benchmark database exists in this research field, an objective comparison among different techniques is not possible. Consequently, we suggest a benchmark framework and apply it to comparatively evaluate relevant state-of-the-art estimators.
机译:当处理包含高维点的数据集时,发现某些数据结构通常是有利的。为此目的所需的基本信息是描述数据所需的最少参数数量,同时将信息损失降至最低。此数字通常称为固有尺寸,可以解释为应该从中提取输入数据的歧管尺寸。由于其在许多理论和实践问题中的有用性,在过去的几十年中,固有维数的概念在科学界引起了相当大的关注,从而激发了文献中提出的大量固有维数估计器。但是,这个问题仍然存在,因为大多数技术都无法有效地处理从具有高固有维数和非线性嵌入高维空间的流形中提取的数据集。本文调查了一些最有趣,使用最广泛和最先进的方法。不幸的是,由于该研究领域不存在基准数据库,因此无法对不同技术进行客观比较。因此,我们提出了一个基准框架,并将其用于比较评估相关的最新估算器。

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  • 来源
    《Mathematical Problems in Engineering》 |2015年第21期|759567.1-759567.21|共21页
  • 作者单位

    Univ Milan, Dipartimento Informat, I-20135 Milan, Italy;

    Univ Milan, Dipartimento Informat, I-20135 Milan, Italy;

    Univ Milan, Dipartimento Informat, I-20135 Milan, Italy;

    Hyera Software, Res Grp, I-25030 Brescia, Italy;

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