Matches in SemOpenAlex for { <https://semopenalex.org/work/W2004075750> ?p ?o ?g. }
- W2004075750 endingPage "690" @default.
- W2004075750 startingPage "671" @default.
- W2004075750 abstract "Attribute reduction is the key technique for knowledge acquisition in rough set theory. However, it is still a challenging task to perform attribute reduction on massive data. During the process of attribute reduction on massive data, the key to improving the reduction efficiency is the effective computation of equivalence classes and attribute significance. Aiming at this problem, we propose several parallel attribute reduction algorithms in this paper. Specifically, we design a novel structure of 〈key,value〉 pair to speed up the computation of equivalence classes and attribute significance and parallelize the traditional attribute reduction process based on MapReduce mechanism. The different parallelization strategies of attribute reduction are also compared and analyzed from the theoretic view. Abundant experimental results demonstrate the proposed parallel attribute reduction algorithms can perform efficiently and scale well on massive data." @default.
- W2004075750 created "2016-06-24" @default.
- W2004075750 creator A5022293618 @default.
- W2004075750 creator A5024791074 @default.
- W2004075750 creator A5075095237 @default.
- W2004075750 creator A5090668921 @default.
- W2004075750 date "2014-09-01" @default.
- W2004075750 modified "2023-10-14" @default.
- W2004075750 title "Parallel attribute reduction algorithms using MapReduce" @default.
- W2004075750 cites W1509742310 @default.
- W2004075750 cites W1547566968 @default.
- W2004075750 cites W1773031661 @default.
- W2004075750 cites W1892848734 @default.
- W2004075750 cites W1964980811 @default.
- W2004075750 cites W1968681563 @default.
- W2004075750 cites W1970217364 @default.
- W2004075750 cites W1971790955 @default.
- W2004075750 cites W1976555061 @default.
- W2004075750 cites W1981299568 @default.
- W2004075750 cites W1986839581 @default.
- W2004075750 cites W1987709954 @default.
- W2004075750 cites W1994743372 @default.
- W2004075750 cites W1995113169 @default.
- W2004075750 cites W2008794359 @default.
- W2004075750 cites W2047421440 @default.
- W2004075750 cites W2069928051 @default.
- W2004075750 cites W2074005500 @default.
- W2004075750 cites W2075340829 @default.
- W2004075750 cites W2078376232 @default.
- W2004075750 cites W2079680557 @default.
- W2004075750 cites W2097923398 @default.
- W2004075750 cites W2107566963 @default.
- W2004075750 cites W2110183025 @default.
- W2004075750 cites W2116762767 @default.
- W2004075750 cites W2119565742 @default.
- W2004075750 cites W2122937613 @default.
- W2004075750 cites W2130206010 @default.
- W2004075750 cites W2140982545 @default.
- W2004075750 cites W2148497813 @default.
- W2004075750 cites W2154950655 @default.
- W2004075750 cites W2158633287 @default.
- W2004075750 cites W2158868693 @default.
- W2004075750 cites W2159394607 @default.
- W2004075750 cites W2169038408 @default.
- W2004075750 cites W2173213060 @default.
- W2004075750 cites W2332026188 @default.
- W2004075750 cites W4255833381 @default.
- W2004075750 doi "https://doi.org/10.1016/j.ins.2014.04.019" @default.
- W2004075750 hasPublicationYear "2014" @default.
- W2004075750 type Work @default.
- W2004075750 sameAs 2004075750 @default.
- W2004075750 citedByCount "87" @default.
- W2004075750 countsByYear W20040757502014 @default.
- W2004075750 countsByYear W20040757502015 @default.
- W2004075750 countsByYear W20040757502016 @default.
- W2004075750 countsByYear W20040757502017 @default.
- W2004075750 countsByYear W20040757502018 @default.
- W2004075750 countsByYear W20040757502019 @default.
- W2004075750 countsByYear W20040757502020 @default.
- W2004075750 countsByYear W20040757502021 @default.
- W2004075750 countsByYear W20040757502022 @default.
- W2004075750 countsByYear W20040757502023 @default.
- W2004075750 crossrefType "journal-article" @default.
- W2004075750 hasAuthorship W2004075750A5022293618 @default.
- W2004075750 hasAuthorship W2004075750A5024791074 @default.
- W2004075750 hasAuthorship W2004075750A5075095237 @default.
- W2004075750 hasAuthorship W2004075750A5090668921 @default.
- W2004075750 hasConcept C111012933 @default.
- W2004075750 hasConcept C111335779 @default.
- W2004075750 hasConcept C111919701 @default.
- W2004075750 hasConcept C11413529 @default.
- W2004075750 hasConcept C118615104 @default.
- W2004075750 hasConcept C124101348 @default.
- W2004075750 hasConcept C173608175 @default.
- W2004075750 hasConcept C177264268 @default.
- W2004075750 hasConcept C199360897 @default.
- W2004075750 hasConcept C2524010 @default.
- W2004075750 hasConcept C26517878 @default.
- W2004075750 hasConcept C2780069185 @default.
- W2004075750 hasConcept C33923547 @default.
- W2004075750 hasConcept C38652104 @default.
- W2004075750 hasConcept C41008148 @default.
- W2004075750 hasConcept C45374587 @default.
- W2004075750 hasConcept C68339613 @default.
- W2004075750 hasConcept C75814411 @default.
- W2004075750 hasConcept C80444323 @default.
- W2004075750 hasConcept C98045186 @default.
- W2004075750 hasConceptScore W2004075750C111012933 @default.
- W2004075750 hasConceptScore W2004075750C111335779 @default.
- W2004075750 hasConceptScore W2004075750C111919701 @default.
- W2004075750 hasConceptScore W2004075750C11413529 @default.
- W2004075750 hasConceptScore W2004075750C118615104 @default.
- W2004075750 hasConceptScore W2004075750C124101348 @default.
- W2004075750 hasConceptScore W2004075750C173608175 @default.
- W2004075750 hasConceptScore W2004075750C177264268 @default.
- W2004075750 hasConceptScore W2004075750C199360897 @default.
- W2004075750 hasConceptScore W2004075750C2524010 @default.
- W2004075750 hasConceptScore W2004075750C26517878 @default.