使用排序属性进行高效连接系统开发的实验

H. Ferrá, A. Kowalczyk, A. Jennings
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引用次数: 2

摘要

提出了一种基于条件熵概念模糊情况的输入属性选择和排序算法。该算法在计算上相对便宜且高效,正如在许多实验中所证明的那样。实验结果支持少量有效输入特征的预选和排序是开发高效神经网络分类器的重要因素。
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Experiments with ordering attributes for efficient connectionist system development
The authors introduce an algorithm for selection and ordering of input attributes based on a generalization to a fuzzy case of the notion of conditional entropy. The algorithm is relatively computationally inexpensive and efficient, as was demonstrated in a number of experiments that are reported. The experimental results support the observation that preselection and ordering of a small number of effective input features constitute an important factor in the development of efficient neural network classifiers.<>
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