Aspects of Metric Spaces in Computation

Metric spaces, which generalise the properties of commonly-encountered physical and abstract spaces into a mathematical framework, frequently occur in computer science applications. Three major kinds of questions about metric spaces are considered here: the intrinsic dimensionality of a distributio...

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Main Author: Skala, Matthew Adam
Language:en
Published: 2008
Subjects:
Online Access:http://hdl.handle.net/10012/3788
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spelling ndltd-WATERLOO-oai-uwspace.uwaterloo.ca-10012-37882013-01-08T18:51:25ZSkala, Matthew Adam2008-06-06T14:43:31Z2008-06-06T14:43:31Z2008-06-06T14:43:31Z2008http://hdl.handle.net/10012/3788Metric spaces, which generalise the properties of commonly-encountered physical and abstract spaces into a mathematical framework, frequently occur in computer science applications. Three major kinds of questions about metric spaces are considered here: the intrinsic dimensionality of a distribution, the maximum number of distance permutations, and the difficulty of reverse similarity search. Intrinsic dimensionality measures the tendency for points to be equidistant, which is diagnostic of high-dimensional spaces. Distance permutations describe the order in which a set of fixed sites appears while moving away from a chosen point; the number of distinct permutations determines the amount of storage space required by some kinds of indexing data structure. Reverse similarity search problems are constraint satisfaction problems derived from distance-based index structures. Their difficulty reveals details of the structure of the space. Theoretical and experimental results are given for these three questions in a wide range of metric spaces, with commentary on the consequences for computer science applications and additional related results where appropriate.enmetric spacerobust hashNP-completeintrinsic dimensionalityAspects of Metric Spaces in ComputationThesis or DissertationSchool of Computer ScienceDoctor of PhilosophyComputer Science
collection NDLTD
language en
sources NDLTD
topic metric space
robust hash
NP-complete
intrinsic dimensionality
Computer Science
spellingShingle metric space
robust hash
NP-complete
intrinsic dimensionality
Computer Science
Skala, Matthew Adam
Aspects of Metric Spaces in Computation
description Metric spaces, which generalise the properties of commonly-encountered physical and abstract spaces into a mathematical framework, frequently occur in computer science applications. Three major kinds of questions about metric spaces are considered here: the intrinsic dimensionality of a distribution, the maximum number of distance permutations, and the difficulty of reverse similarity search. Intrinsic dimensionality measures the tendency for points to be equidistant, which is diagnostic of high-dimensional spaces. Distance permutations describe the order in which a set of fixed sites appears while moving away from a chosen point; the number of distinct permutations determines the amount of storage space required by some kinds of indexing data structure. Reverse similarity search problems are constraint satisfaction problems derived from distance-based index structures. Their difficulty reveals details of the structure of the space. Theoretical and experimental results are given for these three questions in a wide range of metric spaces, with commentary on the consequences for computer science applications and additional related results where appropriate.
author Skala, Matthew Adam
author_facet Skala, Matthew Adam
author_sort Skala, Matthew Adam
title Aspects of Metric Spaces in Computation
title_short Aspects of Metric Spaces in Computation
title_full Aspects of Metric Spaces in Computation
title_fullStr Aspects of Metric Spaces in Computation
title_full_unstemmed Aspects of Metric Spaces in Computation
title_sort aspects of metric spaces in computation
publishDate 2008
url http://hdl.handle.net/10012/3788
work_keys_str_mv AT skalamatthewadam aspectsofmetricspacesincomputation
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