Adaptive Parameter Selection for Strategy Adaptation in Differential Evolution for Continuous Optimization

2012 ◽  
Vol 7 (3) ◽  
Author(s):  
Wenyin Gong ◽  
Zhihua Cai
2020 ◽  
Vol 1476 ◽  
pp. 012003
Author(s):  
Luca Calatroni ◽  
Alessandro Lanza ◽  
Monica Pragliola ◽  
Fiorella Sgallari

IEEE Access ◽  
2017 ◽  
Vol 5 ◽  
pp. 26944-26964 ◽  
Author(s):  
Arka Ghosh ◽  
Swagatam Das ◽  
Rammohan Mallipeddi ◽  
Asit Kumar Das ◽  
Subhransu Sekhar Dash

2018 ◽  
Vol 8 (3) ◽  
pp. 211-235 ◽  
Author(s):  
Deepak Dawar ◽  
Simone A. Ludwig

AbstractDifferential Evolution (DE) is a simple, yet highly competitive real parameter optimizer in the family of evolutionary algorithms. A significant contribution of its robust performance is attributed to its control parameters, and mutation strategy employed, proper settings of which, generally lead to good solutions. Finding the best parameters for a given problem through the trial and error method is time consuming, and sometimes impractical. This calls for the development of adaptive parameter control mechanisms. In this work, we investigate the impact and efficacy of adapting mutation strategies with or without adapting the control parameters, and report the plausibility of this scheme. Backed with empirical evidence from this and previous works, we first build a case for strategy adaptation in the presence as well as in the absence of parameter adaptation. Afterwards, we propose a new mutation strategy, and an adaptive variant SA-SHADE which is based on a recently proposed self-adaptive memory based variant of Differential evolution, SHADE. We report the performance of SA-SHADE on 28 benchmark functions of varying complexity, and compare it with the classic DE algorithm (DE/Rand/1/bin), and other state-of-the-art adaptive DE variants including CoDE, EPSDE, JADE, and SHADE itself. Our results show that adaptation of mutation strategy improves the performance of DE in both presence, and absence of control parameter adaptation, and should thus be employed frequently.


A new adaptive differential evolution algorithm with restart (ADE-R) is proposed as a general-purpose method for solving continuous optimization problems. Its design aims at simplicity of use, efficiency and robustness. ADE-R simulates a population evolution of real vectors using vector mixing operations with an adaptive parameter control based on the switching of two selected intervals of values for each scaling factor and crossover rate of the basic differential evolution algorithm. It also incorporates a restart technique to supply new contents to the population to prevent premature convergence and stagnation. The method is tested on several benchmark functions covering various types of functions and compared with some well-known and state-of-art methods. The experimental results show that ADE-R is effective and outperforms the compared methods.


2016 ◽  
Vol 35 (1) ◽  
pp. 29 ◽  
Author(s):  
Kazeem Oyeyemi Oyebode ◽  
Jules R. Tapamo

Graph cut segmentation approach provides a platform for segmenting images in a globally optimised fashion. The graph cut energy function includes a parameter that adjusts its data term and smoothness term relative to each other. However, one of the key challenges in graph cut segmentation is finding a suitable parameter value that suits a given segmentation. A suitable parameter value is desirable in order to avoid image oversegmentation or under-segmentation. To address the problem of trial and error in manual parameter selection, we propose an intuitive and adaptive parameter selection for cell segmentation using graph cut. The greyscale image of the cell is logarithmically transformed to shrink the dynamic range of foreground pixels in order to extract the boundaries of cells. The extracted cell boundary dynamically adjusts and contextualises the parameter value of the graph cut, countering its shrink bias. Experiments suggest that the proposed model outperforms previous cell segmentation approaches.


Sign in / Sign up

Export Citation Format

Share Document