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首页> 外文期刊>International Journal of Applied Metaheuristic Computing >Bounded, Multidimensional, Integrated Memetic Evolution for Character Recognition Based on Predictive Elimination Theory and Optimization Techniques
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Bounded, Multidimensional, Integrated Memetic Evolution for Character Recognition Based on Predictive Elimination Theory and Optimization Techniques

机译:基于预测消除理论和优化技术的有界,多维,综合模因进化用于字符识别

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This article describes how inspired by the natural process of evolution in genetic algorithms, memetic algorithms (MAs) are a category of cultural evolution phenomenon. The very concept of MA has been discussed in the last few years and is adding newer dimensions to MA and computational skills of algorithms. There are many optimization algorithms which fully exploit the problem under consideration. This article presents a heuristic approach for an improvised algorithm which takes into consideration various optimization parameters in isolation and tries to integrate the self-learning technique of MA. A general structure of MA according to this article should be perfectly in-line with brain activities which are neurotically tested and given maximum emphasis on local search and context-based predictive approaches rather than mathematically computing every event and taking or picking solutions based on results of certain formula. This article goes one step beyond the conventional set of the variety of problem domains, ranging from discrete optimization, continuous optimization, constrained optimization and multi objective optimization in which MAs have been successfully implemented. These optimization techniques must be processed using outcomes of predictive optimization and using a method of elimination to make the search set smaller and smaller as we progress deeper into the search. There is a scarcity of literature and also lack of availability of comprehensive reviews on MAs. The proposed technique is a better approach for solving combinatorial optimization problems. This article gives an overview of various domains and problem types in which MA can be used. Apart from this, the problem of character recognition using predictive optimization and implementation of elimination theory MA is discussed.
机译:本文介绍了遗传算法进化的自然过程是如何受到启发的,模因算法(MAs)是文化进化现象的一种。 MA的概念已经在最近几年进行了讨论,并且正在为MA和算法的计算技能增加新的维度。有许多优化算法可以充分利用所考虑的问题。本文提出了一种启发式的改进算法,它孤立地考虑了各种优化参数,并试图整合MA的自学习技术。根据本文的MA的一般结构应与经过神经学测试的大脑活动完全一致,并应最大程度地强调局部搜索和基于上下文的预测方法,而不是对每个事件进行数学计算并根据结果进行选择某些公式。本文超越了传统的各种问题域集的范围,从离散优化,连续优化,约束优化和多目标优化到成功实现MA的范围。这些优化技术必须使用预测性优化的结果并使用消除方法来处理,以使搜索集随着我们深入搜索而越来越小。文献稀缺,也缺乏关于MA的全面综述。所提出的技术是解决组合优化问题的更好方法。本文概述了可以在其中使用MA的各个领域和问题类型。除此之外,还讨论了使用预测优化和消除理论MA的实现进行字符识别的问题。

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