Download PDFOpen PDF in browserMapReduce Algorithms: Consecutive Retrieval of Clusters and Blackboard Database SystemEasyChair Preprint 33269 pages•Date: May 4, 2020AbstractThe objects of data mining are knowledge discovery process and reduce time complexity. Time taken for Information retrieval in big data is very high. Time complexity will be reduced through information retrieval techniques. Cluster is set of query-data item instances. Consecutive Retrieval(C-R) cluster Property is retrieval of data items in data set or cluster from the consecutive locations. This may be achieved through the consecutively retrieval (C-R) cluster property. C-R cluster property is retrieval information using query-data set incidence or clusters. MapReduce algorithms are Map and Reduce for cluster retrieval consecutively. The time will be reduced through the consecutive retrieval cluster property. Parallelism of clusters is designed through parallel clusters, distributed and concurrency of clusters. The parallel clusters are designed using vector approach and genetic algorithms approach. The distributed and parallel algorithms are designed through blackboard architecture. Time and space complexity shall be reduced using directly storage data items with the Blackboard Architecture. The blackboard architecture shall be used store and retrieve the data items of clusters. Keyphrases: Blackboard Architecture, Blackboard database systems, Consecutive Retrieval, Data Mining, MarReduce algorithms, cluster analysis
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