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Application of genetic programming for multicategory pattern classification

机译:遗传程序设计在多类别模式分类中的应用

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Explores the feasibility of applying genetic programming (GP) to multicategory pattern classification problem. GP can discover relationships and express them mathematically. GP-based techniques have an advantage over statistical methods because they are distribution-free, i.e., no prior knowledge is needed about the statistical distribution of the data. GP also automatically discovers the discriminant features for a class. GP has been applied for two-category classification. A methodology for GP-based n-class classification is developed. The problem is modeled as n two-class problems, and a genetic programming classifier expression (GPCE) is evolved as a discriminant function for each class. The GPCE is trained to recognize samples belonging to its own class and reject others. A strength of association (SA) measure is computed for each GPCE to indicate the degree to which it can recognize samples of its own class. SA is used for uniquely assigning a class to an input feature vector. Heuristic rules are used to prevent a GPCE with a higher SA from swamping one with a lower SA. Experimental results are presented to demonstrate the applicability of GP for multicategory classification, and they are found to be satisfactory. We also discuss the various issues that arise in our approach to GP-based classification, such as the creation of training sets, the role of incremental learning, and the choice of function set in the evolution of GPCE, as well as conflict resolution for uniquely assigning a class.
机译:探索将遗传程序设计(GP)应用于多类别模式分类问题的可行性。 GP可以发现关系并以数学方式表达它们。基于GP的技术相对于统计方法具有优势,因为它们是无分布的,即不需要有关数据统计分布的先验知识。 GP还自动发现类的判别功能。 GP已应用于两类分类。开发了基于GP的n类分类的方法。该问题被建模为n个两类问题,并且遗传编程分类器表达式(GPCE)演变为每个类的判别函数。 GPCE经过培训可以识别属于自己类别的样本,并拒绝其他样本。为每个GPCE计算关联强度(SA)量度,以表明其可以识别其自己类别的样本的程度。 SA用于将类唯一地分配给输入特征向量。启发式规则用于防止SA较高的GPCE淹没SA较低的GPCE。提出实验结果以证明GP在多类别分类中的适用性,并被认为是令人满意的。我们还将讨论在基于GP的分类方法中出现的各种问题,例如培训集的创建,增量学习的作用以及GPCE演进中功能集的选择以及唯一解决冲突的方法分配课程。

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