2020
DOI: 10.48550/arxiv.2001.11739
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Local intrinsic dimensionality estimators based on concentration of measure

Abstract: Intrinsic dimensionality (ID) is one of the most fundamental characteristics of multi-dimensional data point clouds. Knowing ID is crucial to choose the appropriate machine learning approach as well as to understand its behavior and validate it. ID can be computed globally for the whole data distribution, or computed locally in different regions of the dataset. In this paper, we introduce new local estimators of ID based on linear separability of multi-dimensional data point clouds, which is one of the manifes… Show more

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References 21 publications
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