Performing classification with an environment manipulating mutable automata (EMMA)

K. Benson
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引用次数: 1

Abstract

In this paper a novel approach to performing classification is presented, hypersurface discriminant functions are evolved using genetic programming. These discriminant functions reside in the states of finite state automata which have the ability to reason and logically combine the hypersurfaces to generate a complex decision space. An object may be classified by one or many of the discriminant functions, this is decided by the automata. During the evolution of this symbiotic architecture, feature selection for each of the discriminant functions is achieved implicitly, a task which is normally performed before a classification algorithm is trained. Since each discriminant function has different features, and objects may be classified with one or more discriminant functions, no two objects from the same class need be classified using the same features. Instead, the most appropriate features for a given object are used.
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使用操纵可变自动机(EMMA)的环境执行分类
本文提出了一种基于遗传规划的超曲面判别函数分类方法。这些判别函数存在于有限状态自动机的状态中,有限状态自动机具有推理和逻辑组合超曲面以生成复杂决策空间的能力。一个对象可以被一个或多个判别函数分类,这是由自动机决定的。在这种共生体系结构的进化过程中,每个判别函数的特征选择是隐式完成的,这一任务通常在分类算法训练之前执行。由于每个判别函数具有不同的特征,并且对象可以使用一个或多个判别函数进行分类,因此不需要使用相同的特征对同一类的两个对象进行分类。相反,使用最适合给定对象的特性。
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