首页> 外文会议>Genetic and Evolutionary Computation Conference Pt.2 Jul 12-16, 2003 Chicago, IL, USA >Evolving Multiple Discretizations with Adaptive Intervals for a Pittsburgh Rule-Based Learning Classifier System
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Evolving Multiple Discretizations with Adaptive Intervals for a Pittsburgh Rule-Based Learning Classifier System

机译:匹兹堡基于规则的学习分类器系统的具有自适应区间的多重离散化

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One of the ways to solve classification problems with real-value attributes using a Learning Classifier System is the use of a discretization algorithm, which enables traditional discrete knowledge representations to solve these problems. A good discretization should balance losing the minimum of information and having a reasonable number of cut points. Choosing a single discretization that achieves this balance across several domains is not easy. This paper proposes a knowledge representation that uses several discretization (both uniform and non-uniform ones) at the same time, choosing the correct method for each problem and attribute through the iterations. Also, the intervals proposed by each discretization can split and merge among them along the evolutionary process, reducing the search space where possible and expanding it where necessary. The knowledge representation is tested across several domains which represent a broad range of possibilities.
机译:使用学习分类器系统解决具有实值属性的分类问题的一种方法是使用离散化算法,该算法可使传统的离散知识表示形式解决这些问题。良好的离散化应该平衡丢失最少的信息和拥有合理数量的切入点。选择一个离散化来在多个领域实现这种平衡并不容易。本文提出了一种知识表示形式,该知识表示形式同时使用多个离散化(均匀和非均匀离散化),并通过迭代为每个问题和属性选择正确的方法。同样,每次离散化所建议的间隔可以沿着进化过程在它们之间分解和合并,从而在可能的情况下减小搜索空间,并在必要时进行扩展。知识表示在代表广泛可能性的多个领域中进行了测试。

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