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The Impact of the Diversity on Multiple Classifier System Performance Identifying Changes in the Amount of Fuel in the Fleet Management System

机译:多样性对多分类器系统性能的影响识别车队管理系统中燃料量的变化

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When it comes to the use of any recognition systems in the real world environment, it turns out that the reality differs from the theory. There is an assumption that the distribution of the incoming data will be at least similar to the distribution of the data, which were used during the learning process and that learning dataset represents the entire space of the problem. In fact, the incoming data differ from the training set and usually cover only a part of the feature space. Very often we have to deal with imbalanced datasets which leads to underfitting of classifiers in the final ensemble. In this paper we present the Multiple Classifier System based on Random Reference Classifier in the problem of fuel level change detection in the fleet management systems. The ensemble selection process uses probabilistic measures of competence and diversity at the same time. We compare different methods to determine the diversity within the ensemble.
机译:在现实世界环境中使用任何识别系统时,事实证明,现实与理论不同。假设传入数据的分布将至少类似于在学习过程中使用的数据的分布,并且学习数据集代表问题的整个空间。实际上,传入数据与训练集不同,通常只覆盖特征空间的一部分。我们通常必须处理不平衡的数据集,这导致最终合奏中的分类器的垫底。本文在舰队管理系统中,基于随机参考分类器的燃料电平变化检测问题介绍了多分类器系统。合奏选择过程同时使用概率和多样性的概率测量。我们比较不同的方法来确定集合中的多样性。

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