Matches in SemOpenAlex for { <https://semopenalex.org/work/W2584045454> ?p ?o ?g. }
Showing items 1 to 93 of
93
with 100 items per page.
- W2584045454 abstract "The problem of mining high utility sequential patterns (HUSP) has been studied recently. Existing solutions are mostly memory-based, which assume that data can fit into the main memory of a computer. However, with advent of big data, such an assumption does not hold any longer. Hence, existing algorithms are not applicable to the big data environments, where data are often distributed and too large to be dealt with by a single machine. In this paper, we propose a new framework for mining HUSPs in big data. A distributed and parallel algorithm called BigHUSP is proposed to discover HUSPs efficiently. At its heart, BigHUSP uses multiple MapReduce-like steps to process data in parallel. We also propose a number of pruning strategies to minimize search space in a distributed environment, and thus decrease computational and communication costs, while still maintaining correctness. Our experiments with real life and large synthetic datasets validate the effectiveness of BigHUSP for mining HUSPs from large sequence datasets." @default.
- W2584045454 created "2017-02-10" @default.
- W2584045454 creator A5002737263 @default.
- W2584045454 creator A5009394818 @default.
- W2584045454 creator A5037298220 @default.
- W2584045454 creator A5038579484 @default.
- W2584045454 date "2016-12-01" @default.
- W2584045454 modified "2023-10-14" @default.
- W2584045454 title "Distributed and parallel high utility sequential pattern mining" @default.
- W2584045454 cites W1966426226 @default.
- W2584045454 cites W1968940768 @default.
- W2584045454 cites W1985716338 @default.
- W2584045454 cites W2015045861 @default.
- W2584045454 cites W2023770077 @default.
- W2584045454 cites W2071242348 @default.
- W2584045454 cites W2137548844 @default.
- W2584045454 cites W2144309138 @default.
- W2584045454 cites W2146606092 @default.
- W2584045454 cites W2158454296 @default.
- W2584045454 cites W2158741508 @default.
- W2584045454 cites W2164364358 @default.
- W2584045454 cites W2166951489 @default.
- W2584045454 cites W2329285245 @default.
- W2584045454 cites W4241444809 @default.
- W2584045454 doi "https://doi.org/10.1109/bigdata.2016.7840678" @default.
- W2584045454 hasPublicationYear "2016" @default.
- W2584045454 type Work @default.
- W2584045454 sameAs 2584045454 @default.
- W2584045454 citedByCount "24" @default.
- W2584045454 countsByYear W25840454542018 @default.
- W2584045454 countsByYear W25840454542019 @default.
- W2584045454 countsByYear W25840454542020 @default.
- W2584045454 countsByYear W25840454542021 @default.
- W2584045454 countsByYear W25840454542022 @default.
- W2584045454 countsByYear W25840454542023 @default.
- W2584045454 crossrefType "proceedings-article" @default.
- W2584045454 hasAuthorship W2584045454A5002737263 @default.
- W2584045454 hasAuthorship W2584045454A5009394818 @default.
- W2584045454 hasAuthorship W2584045454A5037298220 @default.
- W2584045454 hasAuthorship W2584045454A5038579484 @default.
- W2584045454 hasConcept C108010975 @default.
- W2584045454 hasConcept C111919701 @default.
- W2584045454 hasConcept C11413529 @default.
- W2584045454 hasConcept C120314980 @default.
- W2584045454 hasConcept C124101348 @default.
- W2584045454 hasConcept C133875982 @default.
- W2584045454 hasConcept C173608175 @default.
- W2584045454 hasConcept C2778112365 @default.
- W2584045454 hasConcept C3739613 @default.
- W2584045454 hasConcept C41008148 @default.
- W2584045454 hasConcept C54355233 @default.
- W2584045454 hasConcept C55439883 @default.
- W2584045454 hasConcept C6557445 @default.
- W2584045454 hasConcept C70061542 @default.
- W2584045454 hasConcept C75684735 @default.
- W2584045454 hasConcept C86803240 @default.
- W2584045454 hasConcept C91481028 @default.
- W2584045454 hasConcept C98045186 @default.
- W2584045454 hasConceptScore W2584045454C108010975 @default.
- W2584045454 hasConceptScore W2584045454C111919701 @default.
- W2584045454 hasConceptScore W2584045454C11413529 @default.
- W2584045454 hasConceptScore W2584045454C120314980 @default.
- W2584045454 hasConceptScore W2584045454C124101348 @default.
- W2584045454 hasConceptScore W2584045454C133875982 @default.
- W2584045454 hasConceptScore W2584045454C173608175 @default.
- W2584045454 hasConceptScore W2584045454C2778112365 @default.
- W2584045454 hasConceptScore W2584045454C3739613 @default.
- W2584045454 hasConceptScore W2584045454C41008148 @default.
- W2584045454 hasConceptScore W2584045454C54355233 @default.
- W2584045454 hasConceptScore W2584045454C55439883 @default.
- W2584045454 hasConceptScore W2584045454C6557445 @default.
- W2584045454 hasConceptScore W2584045454C70061542 @default.
- W2584045454 hasConceptScore W2584045454C75684735 @default.
- W2584045454 hasConceptScore W2584045454C86803240 @default.
- W2584045454 hasConceptScore W2584045454C91481028 @default.
- W2584045454 hasConceptScore W2584045454C98045186 @default.
- W2584045454 hasLocation W25840454541 @default.
- W2584045454 hasOpenAccess W2584045454 @default.
- W2584045454 hasPrimaryLocation W25840454541 @default.
- W2584045454 hasRelatedWork W1485627940 @default.
- W2584045454 hasRelatedWork W1534871385 @default.
- W2584045454 hasRelatedWork W1566886392 @default.
- W2584045454 hasRelatedWork W1596201972 @default.
- W2584045454 hasRelatedWork W2101159421 @default.
- W2584045454 hasRelatedWork W2131630752 @default.
- W2584045454 hasRelatedWork W2169880150 @default.
- W2584045454 hasRelatedWork W2360627962 @default.
- W2584045454 hasRelatedWork W2385146268 @default.
- W2584045454 hasRelatedWork W2914031834 @default.
- W2584045454 isParatext "false" @default.
- W2584045454 isRetracted "false" @default.
- W2584045454 magId "2584045454" @default.
- W2584045454 workType "article" @default.