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Multi-Objective Big Data View Materialization Using NSGA-III

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  • Akshay Kumar

    (Jawaharlal Nehru University, India)

  • T. V. Vijay Kumar

    (Jawaharlal Nehru University, India)

Abstract

Present day applications process large amount of data that is being produced at brisk rate and is heterogeneous with levels of trustworthiness. This Big data largely consists of semi-structured and unstructured data, which needs to be processed in admissible time so that timely decisions are taken that benefit the organization and society. Such real time processing would require Big data view materialization that would enable faster and timely processing of decision making queries. Several algorithms exist for Big data view materialization. These algorithms aim to select Big data views that minimize the total query processing cost for the query workload. In literature, this problem has been articulated as a bi-objective optimization problem, which minimizes the query evaluation cost along with the update processing cost. This paper proposes to adapt the reference point based non-dominated sorting genetic algorithm, to design an NSGA-III based Big data view selection algorithm (BDVSANSGA-III) to address this bi-objective Big data view selection problem. Experimental results revealed that the proposed BDVSANSGA-III was able to compute diverse non-dominated Big data views and performed better than the existing algorithms..

Suggested Citation

  • Akshay Kumar & T. V. Vijay Kumar, 2022. "Multi-Objective Big Data View Materialization Using NSGA-III," International Journal of Decision Support System Technology (IJDSST), IGI Global, vol. 14(1), pages 1-28, January.
  • Handle: RePEc:igg:jdsst0:v:14:y:2022:i:1:p:1-28
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