Learning Classifier System Improvement Based on Probability Driven and Neural Network Driven Approaches

Ladislav Clementis
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引用次数: 2

Abstract

Rule-based systems like Learning Classifier System are widely used in areas where data mining, data classification and pattern recognition tasks are essential. It is often difficult to address the knowledge base of these complex classifier systems, which is usually a set of classifiers. Therefore we use evolutionary processes like genetic algorithms to develop their knowledge base. We provide modified Learning Classifier System enriched by probability model to help build an appropriate knowledge base more effectively. We included a neural network into the action selection process and therefore action can be determined accordingly with a probability model. We provide simulation results which demonstrate efficiency of learning processes to compare these approaches.
基于概率驱动和神经网络驱动方法的学习分类器系统改进
基于规则的系统,如学习分类器系统,广泛应用于数据挖掘、数据分类和模式识别等领域。通常很难处理这些复杂分类器系统的知识库,这些知识库通常是一组分类器。因此,我们使用像遗传算法这样的进化过程来发展他们的知识库。我们提供了一个改进的学习分类器系统,该系统通过概率模型的丰富来帮助更有效地建立合适的知识库。我们在动作选择过程中加入了一个神经网络,因此可以根据概率模型来确定动作。我们提供了仿真结果,证明了学习过程的效率,以比较这些方法。
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