Publication | Closed Access
Fractals for secondary key retrieval
325
Citations
16
References
1989
Year
Unknown Venue
Cluster ComputingEngineeringRange QueriesRange SearchingInformation RetrievalData ScienceData MiningPattern RecognitionData RetrievalData ManagementKnowledge DiscoveryTopological Data AnalysisComputer SciencePattern MatchingSecondary Key RetrievalGood ClusteringGeometric AlgorithmNearest Neighbor QueriesSimilarity Search
In this paper we propose the use of fractals and especially the Hilbert curve, in order to design good distance-preserving mappings. Such mappings improve the performance of secondary-key- and spatial- access methods, where multi-dimensional points have to be stored on an 1-dimensional medium (e.g., disk). Good clustering reduces the number of disk accesses on retrieval, improving the response time. Our experiments on range queries and nearest neighbor queries showed that the proposed Hilbert curve achieves better clustering than older methods (“bit-shuffling”, or Peano curve), for every situation we tried.
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