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Training Set Fuzzification Towards Prediction Improvement

机译:训练集模糊化以改善预测

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This article presents a method of fuzzification of variables using a histogram. This approach is used when creating an output vector of a training set that forms linguistic variables. An appropriate transformation of an input vector of the training sets was also proposed. Both of the aforesaid procedures were described in detail in the article. An extensive comparative experimental study with the following outcomes was carried out. The neural net which was adapted by the transformed training set showed a significantly better prediction than a neural network which was adapted by a training set without making any changes. The results of this experimental study were analyzed in the conclusion.
机译:本文介绍了一种使用直方图模糊化变量的方法。在创建形成语言变量的训练集的输出向量时使用此方法。还提出了对训练集的输入向量的适当变换。文章中详细介绍了上述两个过程。进行了广泛的对比实验研究,得出以下结果。经过转换的训练集适应的神经网络显示出比未经训练集适应的神经网络明显更好的预测。结论对本实验研究的结果进行了分析。

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