Publication | Closed Access
Efficiently Processing Continuous k-NN Queries on Data Streams
64
Citations
17
References
2007
Year
Unknown Venue
Cluster ComputingContinuous K-nn QueriesSkyline Data StructureEngineeringData ScienceData MiningEdge ComputingData Stream MiningKnowledge DiscoveryStreaming AlgorithmNearest NeighborComputer ScienceData Stream ManagementData Streaming ArchitectureStreaming DataData ManagementNearest NeighborsBig Data
Efficiently processing continuous k-nearest neighbor queries on data streams is important in many application domains, e. g. for network intrusion detection. Usually not all valid data objects from the stream can be kept in main memory. Therefore, most existing solutions are approximative. In this paper, we propose an efficient method for exact k-NN monitoring. Our method is based on three ideas, (1) selecting exactly those objects from the stream which are able to become the nearest neighbor of one or more continuous queries and storing them in a skyline data structure, (2) delaying to process those objects which are not immediately nearest neighbors of any query, and (3) indexing the queries rather than the streaming objects. In an extensive experimental evaluation we demonstrate that our method is applicable on high throughput data streams requiring only very limited storage.
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