2020
DOI: 10.34133/2020/1762107
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Flexible Wolf Pack Algorithm for Dynamic Multidimensional Knapsack Problems

Abstract: Optimization problems especially in a dynamic environment is a hot research area that has attracted notable attention in the past decades. It is clear from the dynamic optimization literatures that most of the efforts have been devoted to continuous dynamic optimization problems although the majority of the real-life problems are combinatorial. Moreover, many algorithms shown to be successful in stationary combinatorial optimization problems commonly have mediocre performance in a dynamic environment. … Show more

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Cited by 17 publications
(9 citation statements)
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“…Extract the principal components of data based on the feature matrix of principal component analysis. 31,32 When 12 principal components were selected, the cumulative variance contribution rate reached 90.5%. Therefore, this experiment selected the first 12 principal components of the PCA feature matrix as the original input of the subsequent DPC-SNA algorithm clustering, thereby reducing the data dimension from 48 to 12.…”
Section: Analysis Of Clustering Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…Extract the principal components of data based on the feature matrix of principal component analysis. 31,32 When 12 principal components were selected, the cumulative variance contribution rate reached 90.5%. Therefore, this experiment selected the first 12 principal components of the PCA feature matrix as the original input of the subsequent DPC-SNA algorithm clustering, thereby reducing the data dimension from 48 to 12.…”
Section: Analysis Of Clustering Resultsmentioning
confidence: 99%
“…Extract the principal components of data based on the feature matrix of principal component analysis 31,32 . When 12 principal components were selected, the cumulative variance contribution rate reached 90.5%.…”
Section: Analysis Of User Power Consumption Based On Dpc‐sna Algorithmmentioning
confidence: 99%
“…As the number of objectives increases, the computational cost of such algorithms becomes very expensive, so the computational cost needs to be considered when designing such algorithms. MOEAs based on swarm intelligence . This kind of MOEAs extends some swarm intelligence techniques with good performance to the field of multi‐objective optimization, 21–23 and swarm intelligence algorithms have unique optimization methods and strong adaptability 24,25 The optimization method of swarm intelligence algorithm is novel and unique, and has strong adaptability. Such as MOPSO, 26 MOFA, 27 CFMOFA, 28 MOFA‐HL, 29 all based on swarm intelligence algorithm is extended.…”
Section: Introductionmentioning
confidence: 99%
“…Traditional NID techniques achieve intrusion detection by comparing attacks identified in the feature code database, but this method has a high leakage rate and lag [1]. Recently, with the rapid development of artificial intelligence [2][3][4][5] and machine learning technologies [6][7][8], machine learning-based NID methods are gradually becoming a research hotspot.…”
Section: Introductionmentioning
confidence: 99%