Subjects
-Tags
Mathematics and Computer Science
Abstract
Brain Storm Optimization (BSO) is one of the most effective swarm intelligence methods for finding optimality in optimization problems by simulating the human brainstorming process. The BSO approach has been effectively used to a wide range of employed in several real-world issues. This study focuses on the use of a hybrid approach in conjunction with the idea of self-organization for multiple sequence alignment (MSA) problems. The term “self-organization" refers to a structure that operates without the need for external intervention. To demonstrate the efficacy of the algorithm, we applied BSO to MSA and evaluated the resulting alignment using the sum-of-pair score (SPS). The efficiency of BSO was evaluated using Benchmark Alignment Database (BAliBASE) reference multiple sequence alignments. The BSO method outperformed some other metaheuristic methods and achieves better alignments than existing MSA techniques.
DOI
10.21608/aunj.2022.234649
Keywords
Multiple sequence alignment, Brain storm optimization
Link
https://aunj.journals.ekb.eg/article_234649.html
Detail API
https://aunj.journals.ekb.eg/service?article_code=234649
Type
Novel Research Articles
Publication Title
Assiut University Journal of Multidisciplinary Scientific Research
Publication Link
https://aunj.journals.ekb.eg/
MainTitle
Brain Storm Optimization for Multiple Sequence Alignment problem