本文源自:http://blog.sina.com.cn/s/blog_714e46f80100sozi.html
Memetic algorithms (MA) represent one of the recent growing areas of research in evolutionary computation. The term MA is now widely used as a synergy of evolutionary or any population-based approach with separate individual learning or local improvement procedures for problem search. Quite often, MA are also referred to in the literature as Baldwinian EAs, Lamarckian EAs, cultural algorithms or genetic local search.
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The theory of “Universal Darwinism” was coined by Richard Dawkins[1] in 1983 to provide a unifying framework governing the evolution of any complex system. In particular, “Universal Darwinism” suggests that evolution is not exclusive to biological systems, i.e., it is not confined to the narrow context of the genes, but applicable to any complex system that exhibit the principles of inheritance, variation and selection, thus fulfilling the traits of an evolving system. For example, the new science of memetics represents the mind-universe analogue to genetics in culture evolution that stretches across the fields of biology, cognition and psychology, which has attracted significant attention in the last decades. The term “meme” was also introduced and defined by Dawkins[1] in 1976 as “the basic unit of cultural transmission, or imitation”, and in the English Oxford Dictionary as “an element of culture that may be considered to be passed on by non-genetic means”.
Inspired by both Darwinian principles of natural evolution and Dawkins’ notion of a meme, the term “Memetic Algorithm” (MA) was first introduced by Moscato in his technical report[2] in 1989 where he viewed MA as being close to a form of population-based hybrid genetic algorithm (GA) coupled with an individual learning procedure capable of performing local refinements. The metaphorical parallels, on the one hand, to Darwinian evolution and, on the other hand, between memes and domain specific (local search) heuristics are captured within memetic algorithms thus rendering a methodology that balances well between generality and problem specificity. In a more diverse context, memetic algorithms are now used under various names including Hybrid Evolutionary Algorithms, Baldwinian Evolutionary Algorithms, Lamarckian Evolutionary Algorithms, Cultural Algorithms or Genetic Local Search. In the context of complex optimization, many different instantiations of memetic algorithms have been reported across a wide range of application domains, in general, converging to high quality solutions more efficiently than their conventional evolutionary counterparts.
In general, using the ideas of memetics within a computational framework is called "Memetic Computing" (MC). With MC, the traits of Universal Darwinism are more appropriately captured. Viewed in this perspective, MA is a more constrained notion of MC. More specifically, MA covers one area of MC, in particular dealing with areas of evolutionary algorithms that marry other deterministic refinement techniques for solving optimization problems. MC extends the notion of memes to cover conceptual entities of knowledge-enhanced procedures or representations.
The first generation of MA refers to hybrid algorithms, a marriage between a population-based global search (often in the form of an evolutionary algorithm) coupled with a cultural evolutionary stage. This first generation of MA although encompasses characteristics of cultural evolution (in the form of local refinement) in the search cycle, it may not qualify as a true evolving system according to Universal Darwinism, since all the core principles of inheritance/memetic transmission, variation and selection are missing. This suggests why the term MA stirred up criticisms and controversies among researchers when first introduced.[2]
Pseudo code:
Procedure Memetic Algorithm Initialize: Generate an initial population; while Stopping conditions are not satisfied do Evaluate all individuals in the population. Evolve a new population using stochastic search operators. Select the subset of individuals, Ωil, that should undergo the individual improvement procedure. for each individual in Ωil do Perform individual learning using meme(s) with frequency or probability of fil, for a period of til. Proceed with Lamarckian or Baldwinian learning. end for end while
Multi-meme,[3] Hyper-heuristic[4] and Meta-Lamarckian MA[5] are referred to as second generation MA exhibiting the principles of memetic transmission and selection in their design. In Multi-meme MA, the memetic material is encoded as part of the genotype. Subsequently, the decoded meme of each respective individual / chromosome is then used to perform a local refinement. The memetic material is then transmitted through a simple inheritance mechanism from parent to offspring(s). On the other hand, in hyper-heuristic and meta-Lamarckian MA, the pool of candidate memes considered will compete, based on their past merits in generating local improvements through a reward mechanism, deciding on which meme to be selected to proceed for future local refinements. Memes with a higher reward have a greater chance of being replicated or copied. For a review on second generation MA, i.e., MA considering multiple individual learning methods within an evolutionary system, the reader is referred to.[6]
Co-evolution[7] and self-generating MAs[8] may be regarded as 3rd generation MA where all three principles satisfying the definitions of a basic evolving system have been considered. In contrast to 2nd generation MA which assumes that the memes to be used are known a priori, 3rd generation MA utilizes a rule-based local search to supplement candidate solutions within the evolutionary system, thus capturing regularly repeated features or patterns in the problem space.
The frequency and intensity of individual learning directly define the degree of evolution (exploration) against individual learning (exploitation) in the MA search, for a given fixed limited computational budget. Clearly, a more intense individual learning provides greater chance of convergence to the local optima but limits the amount of evolution that may be expended without incurring excessive computational resources. Therefore, care should be taken when setting these two parameters to balance the computational budget available in achieving maximum search performance. When only a portion of the population individuals undergo learning, the issue on which subset of individuals to improve need to be considered to maximize the utility of MA search. Last but not least, the individual learning procedure/meme used also favors a different neighborhood structure, hence the need to decide which meme or memes to use for a given optimization problem at hand would be required.
One of the first issues pertinent to memetic algorithm design is to consider how often the individual learning should be applied, i.e., individual learning frequency. In one case,[9] the effect of individual learning frequency on MA search performance was considered where various configurations of the individual learning frequency at different stages of the MA search were investigated. Conversely, it was shown elsewhere[10] that it may be worthwhile to apply individual learning on every individual if the computational complexity of the individual learning is relatively low.
On the issue of selecting appropriate individuals among the EA population that should undergo individual learning, fitness-based and distribution-based strategies were studied for adapting the probability of applying individual learning on the population of chromosomes in continuous parametric search problems with Land[11] extending the work to combinatorial optimization problems. Bambha et al. introduced a simulated heating technique for systematically integrating parameterized individual learning into evolutionary algorithms to achieve maximum solution quality.[12]
Individual learning intensity, til, is the amount of computational budget allocated to an iteration of individual learning, i.e., the maximum computational budget allowable for individual learning to expend on improving a single solution.
In the context of continuous optimization, individual learning/individual learning exists in the form of local heuristics or conventional exact enumerative methods.[13] Examples of individual learning strategies include the hill climbing, Simplex method, Newton/Quasi-Newton method, interior point methods, conjugate gradient method, line search and other local heuristics. Note that most of common individual learninger are deterministic.
In combinatorial optimization, on the other hand, individual learning methods commonly exists in the form of heuristics (which can be deterministic or stochastic), that are tailored to serve a problem of interest well. Typical heuristic procedures and schemes include the k-gene exchange, edge exchange, first-improvement, and many others.
Memetic algorithms are the subject of intense scientific research (a scientific journal devoted to their research is going to be launched) and have been successfully applied to a multitude of real-world problems. Although many people employ techniques closely related to memetic algorithms, alternative names such as hybrid genetic algorithms are also employed. Furthermore, many people term their memetic techniques as genetic algorithms. The widespread use of this misnomer hampers the assessment of the total amount of applications.
Researchers have used memetic algorithms to tackle many classical NP problems. To cite some of them: graph partitioning, multidimensional knapsack, travelling salesman problem, quadratic assignment problem, set cover problem, minimal graph colouring, max independent set problem, bin packing problem and generalized assignment problem.
More recent applications include (but are not limited to): training of artificial neural networks,[14] pattern recognition,[15] robotic motion planning,[16] beam orientation,[17] circuit design,[18] electric service restoration,[19] medical expert systems,[20] single machine scheduling,[21] automatic timetabling (notably, the timetable for the NHL),[22] manpower scheduling,[23] nurse rostering and function optimisation,[24] processor allocation,[25] maintenance scheduling (for example, of an electric distribution network),[26] multidimensional knapsack problem,[27] VLSI design,[28] clustering of gene expression profiles,[29] feature/gene selection,[30][31] and multi-class, multi-objective feature selection.[32]