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dc.contributor.authorKulakovska, I.-
dc.date.accessioned2026-02-02T09:37:34Z-
dc.date.available2026-02-02T09:37:34Z-
dc.date.issued2025-
dc.identifier.issn18144225-
dc.identifier.urihttps://www.scopus.com/pages/publications/105027675767-
dc.identifier.urihttps://nti.khai.edu/ojs/index.php/reks/article/view/reks.2025.4.05-
dc.identifier.urihttps://dspace.chmnu.edu.ua/jspui/handle/123456789/3093-
dc.descriptionKulakovska, I. (2025). Efficiency analysis of GREEDI algorithm under delta-matroid constraints for subset selection in distributed systems = Аналіз ефективності алгоритму GREEDI в умовах обмежень дельта-матроїда для вибору підмножин у розподілених системах. Radioelectronic and Computer Systems, (4), 69–82. DOI: 10.32620/reks.2025.4.05uk_UA
dc.description.abstractThe subject matter of the article is the efficiency analysis of greedy optimization algorithms for subset selection in distributed systems under delta-matroid constraints. The goal is to compare the performance of the classical unconstrained greedy algorithm and the GREEDI algorithm with delta-matroid constraints in terms of solution quality, computational characteristics, and scalability. The tasks to be solved are: to implement both algorithms; to perform simulations on synthetic graph datasets with sizes ranging from 10 to 100 nodes; to benchmark computational efficiency and approximation quality; to analyze the impact of delta-matroid constraints on benefit maximization and distributed execution. The methods used are: graph-based modeling, combinatorial optimization under matroid-type constraints, approximation algorithms, and distributed processing frameworks. The following results were obtained: GREEDI consistently provided higher-benefit subsets compared to the unconstrained greedy algorithm, achieving better trade-offs between execution time and solution quality; the distributed processing framework demonstrated scalability for large datasets and supported real-time responsiveness; performance advantages were more pronounced for larger graphs and higher constraint densities. Conclusions. The scientific novelty of the results obtained is as follows: 1) an experimental validation of the GREEDI algorithm under delta-matroid constraints for distributed subset selection was carried out; 2) the influence of such constraints on approximation quality and computational characteristics was quantified; 3) a scalable real-time processing approach for large graph-structured data was proposed, enabling potential applications in sensor deployment, recommendation systems, feature selection, and cache optimization.uk_UA
dc.language.isoenuk_UA
dc.publisherNational Aerospace University Kharkiv Aviation Instituteuk_UA
dc.subjectapproximation algorithmuk_UA
dc.subjectcomputational efficiencyuk_UA
dc.subjectdelta-matroid constraintuk_UA
dc.subjectdistributed systemuk_UA
dc.subjectfeature selectionuk_UA
dc.subjectgreedy algorithmuk_UA
dc.subjectreal-time processinguk_UA
dc.subjectsensor networkuk_UA
dc.subjectsubset optimizationuk_UA
dc.titleEfficiency analysis of GREEDI algorithm under delta-matroid constraints for subset selection in distributed systemsuk_UA
dc.title.alternativeАналіз ефективності алгоритму GREEDI в умовах обмежень дельта-матроїда для вибору підмножин у розподілених системахuk_UA
dc.typeArticleuk_UA
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