Memetic Algorithms for Solving Very Complex Optimization Problems

A special issue of Algorithms (ISSN 1999-4893). This special issue belongs to the section "Analysis of Algorithms and Complexity Theory".

Deadline for manuscript submissions: closed (31 December 2020) | Viewed by 3568

Special Issue Editors


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Guest Editor
Department of Telecommunications and Media Informatics, Budapest University of Technology and Economics, 1117 Budapest, Hungary
Interests: fuzzy sytems; optimisation; fuzzy rule extraction; model fitting by population based meta-heuristics
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Section Board Member
Departamento de Lenguajes y Ciencias de la Computación, Universidad de Malaga, 29071 Malaga, Spain
Interests: Evolutionary algorithms; Theory and design; Memetic computing; Hybridization; Parallelization; Complex networks; Emergent behavior; Bioinformatics; Combinatorial optimization; Games; Operations research

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Guest Editor
Department of Computer Science, AGH University of Science and Technology, 30-059 Krakow, Poland
Interests: nature-inspired computation (global optimization); agent-based distributed computation; artificial intelligence; parallel and distributed computing and simulations

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Guest Editor
College of Science, Health, Engineering and Education, Murdoch University, 6150 Perth, Australia
Interests: computational intelligence; machine learning; data mining; virtual reality; elearning

Special Issue Information

Dear Colleagues,

Engineering, including social, agricultural, management, etc., engineering and other applied fields, very often faces problems that are theoretically unsolvable in the mathematical sense, as they belong to the intractable NP-hard (non-polynomial) complexity class, or even for polynomial class problems, the exponent is too high and thus a theoretically acceptable solver leads to an algorithm that will not deliver results in any reasonable time. This is not an effect of “too slow” or “too small capacity” computers, such as the hypothetical “galactic computer” that would have the size of the galaxy, in the sense that each atom would be a computing unit that would operate with the speed of light but still could not deliver guaranteed results for even moderately large-sized real problems within the total time elapsed since the Big Bang .

How come that such “unsolvable tasks” can nevertheless be tackled in real life by various intuitive and expert approaches? Instead of looking for an exact solution, engineers and other applied specialists are satisfied with near-optimal and almost-sure solutions. In the control of non-linear systems, which occurs rather commonly in every field of industry, linear model approximations or stable expert approaches are applied. In the optimization of routing, scheduling, or packing, heuristic algorithms are developed, which are able to handle extremely large instances in the order of millions of nodes or agents. Many of these heuristic and approximate approaches are tailor made and suitable only for a single type of task, or for a very narrow class of problems. However, as always new problems emerge, and new extensions or modifications of the existing tasks have to be solved, it is necessary that approaches and algorithms of “universal” applicability are studied.

Evolutionary algorithms, one of the three main components of computational intelligence, offer at first attempt a rather good answer to these problems. Their basic idea is to mimic the natural evolution of living beings, by applying two elements: the random strategy of mutation, and the advantageous combination of existing candidates for a good solution by cross breeding, exchanging the “genes” or “chromosomes” of more or less acceptable candidates for an optimal solution. However, evolutionary algorithms have the tempting property of being global in the search for optimal solutions; the difficulty caused by this globality is the slowness of the convergence to an acceptably optimal solution.

On the other hand, in traditional mathematics, there are methods for optimizing functions, graph searches, etc. The great disadvantage of such methods, like gradient-type optimization, e.g., Levenberg–Marquardt (LM) optimization, is that they always go to the nearest optimum. However, they are rather fast and efficient. Thus, they are the most suitable approaches for local searches of the optimum.

P. Moscato had the brilliant idea to combine the advantages of both the global search using the evolutionary (genetic) method and the local search using a traditional gradient-type approach. As a result, a new class of more efficient, faster, and more precise algorithms was created: memetic algorithms. Here, both advantages are combined: the evolutionary part provides global search and the traditional part very fast local search. The latter is nested into the cycles of the former. Later, some generalizations of Moscato’s original idea were proposed and a wider class of memetic algorithms was proposed where the outer cycle is an arbitrary evolutionary- or population-based optimization technique and the inner cycle (or even, cycles) use any traditional local search method, including discrete ones, like 2-opt, etc.

These approaches led to rather good results, e.g., the Guest Editor’s team combined Nawa and Furuhashi’s Bacterial Evolutionary Algorithm with LM, or, in discrete cases, subsequent 2-opt and 3-opt, and achieved rather generally applicable and efficient new algorithms.

This Special Issue is dedicated to memetic algorithms in the widest sense. Papers on new techniques, or new combinations of techniques, proposing novel memetic algorithms are very welcome, where there is a novelty element in the approach itself or in the way of applying it for a certain class of problems. It is very important, however, that the novelty and the value of the proposed new approaches is validated. There are many data depositories for various benchmark problems (function optimization, mechanical, chemical, and other control systems; and graph search, scheduling, bin packing, and similar discrete NP-hard tasks). The condition of acceptance is that at least one of the following criteria is satisfied:

The new method is

-           More efficient (faster or more precise, or in some sense better in a well-motivated evaluation sense);

-           More predictable in the run time than previous approaches;

-           More general (“universal”) in terms of applicability.

It is possible that a combination of a memetic and one or more other type (evolutionary, traditional, etc.) algorithm(s) could be combined, assuming that one of the above criteria is satisfied . Thus, research papers where scheduling algorithms for alternating optimization periods are presented are welcome—if at least one of the components is a memetic approach.

Authors are encouraged to refer to benchmark data repositories and present sufficiently large and complex problems to support their claims.

Prof. Dr. László T. Kóczy
Dr. Carlos Cotta
Dr. Aleksander Byrski
Dr. Kevin Wong
Guest Editors

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Published Papers (1 paper)

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17 pages, 1264 KiB  
Article
Unsupervised Text Feature Selection Using Memetic Dichotomous Differential Evolution
by Ibraheem Al-Jadir, Kok Wai Wong, Chun Che Fung and Hong Xie
Algorithms 2020, 13(6), 131; https://doi.org/10.3390/a13060131 - 26 May 2020
Cited by 1 | Viewed by 2951
Abstract
Feature Selection (FS) methods have been studied extensively in the literature, and there are a crucial component in machine learning techniques. However, unsupervised text feature selection has not been well studied in document clustering problems. Feature selection could be modelled as an optimization [...] Read more.
Feature Selection (FS) methods have been studied extensively in the literature, and there are a crucial component in machine learning techniques. However, unsupervised text feature selection has not been well studied in document clustering problems. Feature selection could be modelled as an optimization problem due to the large number of possible solutions that might be valid. In this paper, a memetic method that combines Differential Evolution (DE) with Simulated Annealing (SA) for unsupervised FS was proposed. Due to the use of only two values indicating the existence or absence of the feature, a binary version of differential evolution is used. A dichotomous DE was used for the purpose of the binary version, and the proposed method is named Dichotomous Differential Evolution Simulated Annealing (DDESA). This method uses dichotomous mutation instead of using the standard mutation DE to be more effective for binary purposes. The Mean Absolute Distance (MAD) filter was used as the feature subset internal evaluation measure in this paper. The proposed method was compared with other state-of-the-art methods including the standard DE combined with SA, which is named DESA in this paper, using five benchmark datasets. The F-micro, F-macro (F-scores) and Average Distance of Document to Cluster (ADDC) measures were utilized as the evaluation measures. The Reduction Rate (RR) was also used as an evaluation measure. Test results showed that the proposed DDESA outperformed the other tested methods in performing the unsupervised text feature selection. Full article
(This article belongs to the Special Issue Memetic Algorithms for Solving Very Complex Optimization Problems)
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