Literature DB >> 33723497

Multi-objective database queries in combined knapsack and set covering problem domains.

Sean A Mochocki1, Gary B Lamont1, Robert C Leishman1, Kyle J Kauffman2.   

Abstract

Database queries are one of the most important functions of a relational database. Users are interested in viewing a variety of data representations, and this may vary based on database purpose and the nature of the stored data. The Air Force Institute of Technology has approximately 100 data logs which will be converted to the standardized Scorpion Data Model format. A relational database is designed to house this data and its associated sensor and non-sensor metadata. Deterministic polynomial-time queries were used to test the performance of this schema against two other schemas, with databases of 100 and 1000 logs of repeated data and randomized metadata. Of these approaches, the one that had the best performance was chosen as AFIT's database solution, and now more complex and useful queries need to be developed to enable filter research. To this end, consider the combined Multi-Objective Knapsack/Set Covering Database Query. Algorithms which address The Set Covering Problem or Knapsack Problem could be used individually to achieve useful results, but together they could offer additional power to a potential user. This paper explores the NP-Hard problem domain of the Multi-Objective KP/SCP, proposes Genetic and Hill Climber algorithms, implements these algorithms using Java, populates their data structures using SQL queries from two test databases, and finally compares how these algorithms perform.
© The Author(s) 2021.

Entities:  

Keywords:  Algorithm Domain; Genetic Algorithm; Hill Climber Algorithm; Knapsack Problem; Multi-Objective; Position Navigation and Timing; Problem Domain; Set Covering Problem; The Knapsack Set Covering Problem

Year:  2021        PMID: 33723497      PMCID: PMC7945622          DOI: 10.1186/s40537-021-00433-x

Source DB:  PubMed          Journal:  J Big Data        ISSN: 2196-1115


  2 in total

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Authors:  D A Van Veldhuizen; G B Lamont
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