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Published in: Neural Computing and Applications 16/2020

21-08-2019 | Real-world Optimization Problems and Meta-heuristics

Normal parameter reduction algorithm in soft set based on hybrid binary particle swarm and biogeography optimizer

Authors: Ali Safaa Sadiq, Mohammed Adam Tahir, Abdulghani Ali Ahmed, Abdullah Alghushami

Published in: Neural Computing and Applications | Issue 16/2020

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Abstract

Existing classification techniques that are proposed previously for eliminating data inconsistency could not achieve an efficient parameter reduction in soft set theory, which effects on the obtained decisions. Meanwhile, the computational cost made during combination generation process of soft sets could cause machine infinite state, which is known as nondeterministic polynomial time. The contributions of this study are mainly focused on minimizing choices costs through adjusting the original classifications by decision partition order and enhancing the probability of searching domain space using a developed Markov chain model. Furthermore, this study introduces an efficient soft set reduction-based binary particle swarm optimized by biogeography-based optimizer (SSR-BPSO-BBO) algorithm that generates an accurate decision for optimal and sub-optimal choices. The results show that the decision partition order technique is performing better in parameter reduction up to 50%, while other algorithms could not obtain high reduction rates in some scenarios. In terms of accuracy, the proposed SSR-BPSO-BBO algorithm outperforms the other optimization algorithms in achieving high accuracy percentage of a given soft dataset. On the other hand, the proposed Markov chain model could significantly represent the robustness of our parameter reduction technique in obtaining the optimal decision and minimizing the search domain.

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Metadata
Title
Normal parameter reduction algorithm in soft set based on hybrid binary particle swarm and biogeography optimizer
Authors
Ali Safaa Sadiq
Mohammed Adam Tahir
Abdulghani Ali Ahmed
Abdullah Alghushami
Publication date
21-08-2019
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 16/2020
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-019-04423-2

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