<学術雑誌論文>
Local Fitness Landscape from Paired Comparison-Based Memetic Search in Interactive Differential Evolution and Differential Evolution

作成者
本文言語
出版者
発行日
収録物名
開始ページ
終了ページ
出版タイプ
アクセス権
関連DOI
関連URI
関連情報
概要 We propose a triple comparison-based interactive differential evolution (IDE) algorithm and differential evolution (DE) algorithm. The comparison of target vector and trial vector supports a local fit...ness landscape for IDE and DE algorithms to conduct a memetic search. In addition to the target vector and trial vector used in canonical IDE and DE algorithm frameworks, we conduct a memetic search around whichever vector has better fitness. We use a random number from a normal distribution generator or a uniform distribution generator to perturb the vector, thereby generating a third vector. By comparing the target vector, the trial vector, and the third vector, we implement a triple comparison mechanism in IDE and DE algorithms. A Gaussian mixture model is used as a pseudo-IDE user for evaluating the IDE and 25 benchmark functions from the CEC2005 test suite are employed to evaluate the DE. We compare our proposals with canonical IDE and triple comparison-based IDE implemented by opposite-based learning and apply several statistical tests to investigate the significance of our proposed algorithms. We also compare our proposals with several evaluation metrics, such as number of function calls, success rate and acceleration rate. Our proposed triple comparison-based IDE and DE algorithms show significantly better optimization performance arising from the evaluation results. We also investigate potential issues arising from our proposal and discuss some open topics and future opportunities.続きを見る

本文ファイル

pdf authorFinalVersion pdf 301 KB 520  

詳細

レコードID
査読有無
主題
ISSN
DOI
NCID
登録日 2017.05.24
更新日 2021.10.06

この資料を見た人はこんな資料も見ています