2017
DOI: 10.1109/tevc.2017.2694221
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DG2: A Faster and More Accurate Differential Grouping for Large-Scale Black-Box Optimization

Abstract: Link to publication on Research at Birmingham portal General rights Unless a licence is specified above, all rights (including copyright and moral rights) in this document are retained by the authors and/or the copyright holders. The express permission of the copyright holder must be obtained for any use of this material other than for purposes permitted by law. • Users may freely distribute the URL that is used to identify this publication. • Users may download and/or print one copy of the publication from th… Show more

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Cited by 261 publications
(179 citation statements)
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References 61 publications
(116 reference statements)
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“…The threshold parameter has a great influence on the decomposition accuracy of DG-based algorithms, there are three methods to set it up to now, including fixed threshold (FT) [9], function space based threshold (FST) [11] and computational roundoff error based threshold (CRET) [13]. In this part, we will review them in sequence.…”
Section: Threshold Setting Methodsmentioning
confidence: 99%
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“…The threshold parameter has a great influence on the decomposition accuracy of DG-based algorithms, there are three methods to set it up to now, including fixed threshold (FT) [9], function space based threshold (FST) [11] and computational roundoff error based threshold (CRET) [13]. In this part, we will review them in sequence.…”
Section: Threshold Setting Methodsmentioning
confidence: 99%
“…Besides, its decomposition accuracy is also limited by the threshold setting method. After DG was proposed, many algorithms were developed to improved it, including global DG [11], extend DG [10], FII [12], DG2 [13] and VGDA [14]. The first two drawbacks have been remedied very well, but for threshold setting, some work still need to be done to improve it.…”
Section: Decomposition Algorithmsmentioning
confidence: 99%
“…The CEC'2010 large-scale optimization benchmark covers different degrees of separability and multi-modality, which are the main difficulties for large-scale optimization problems [59], and thus has been commonly used to verify the performance of large-scale optimization algorithms [17], [33], [60]. Given this, it is also adopted as the test suite in the empirical studies.…”
Section: Experiments Protocolmentioning
confidence: 99%
“…The on-line random grouping happens every iteration as [31] proved that randomly grouping more frequently could minimize the interdependencies among sub-problems. DC-DG decomposes the problem using the improved differential grouping strategy, i.e., DG2 [60], which actively analyzes the interdependencies among decision variables so that the decomposition can be made much more accurate. The only difference between the above three compared algorithms and their corresponding parallelized counterparts is that the former builds the objective function for sub-problems using Eq.…”
Section: Algorithm Settingsmentioning
confidence: 99%
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