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TSP
2010

On local intrinsic dimension estimation and its applications

13 years 7 months ago
On local intrinsic dimension estimation and its applications
In this paper, we present multiple novel applications for local intrinsic dimension estimation. There has been much work done on estimating the global dimension of a data set, typically for the purposes of dimensionality reduction. We show that by estimating dimension locally, we are able to extend the uses of dimension estimation to many applications, which are not possible with global dimension estimation. Additionally, we show that local dimension estimation can be used to obtain a better global dimension estimate, alleviating the negative bias that is common to all known dimension estimation algorithms. We illustrate local dimension estimation's uses towards additional applications, such as learning on statistical manifolds, network anomaly detection, clustering, and image segmentation.
Kevin M. Carter, Raviv Raich, Alfred O. Hero
Added 22 May 2011
Updated 22 May 2011
Type Journal
Year 2010
Where TSP
Authors Kevin M. Carter, Raviv Raich, Alfred O. Hero
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