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New feature selection method based on neural network and machine learning

机译:基于神经网络和机器学习的新特征选择方法

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Feature selection becomes the focus of much research in many areas of applications for which datasets with large number of features are available. Feature selection is a problem of choosing a subset of relevant features to increase the execution speed of the algorithm and the classification accuracy. It also removes inappropriate features to increase the precision and improve the performances. There has been much effort for solving the feature selection problem up to now and many researchers have proposed and developed many feature selection algorithms in this purpose. In this paper, we propose a new feature selection method based on neural network and machine learning. This new algorithm tends to highlight the best features among existing ones: new weighting-based method of the input features is used in the neural network to choose the best features. Performances show that this method selects the best features on simulated data.
机译:在具有大量特征数据集的许多应用领域中,特征选择已成为许多研究的重点。特征选择是选择相关特征的子集以提高算法的执行速度和分类精度的问题。它还删除了不合适的功能以提高精度并改善性能。迄今为止,为解决特征选择问题已经进行了很多努力,为此许多研究者提出并开发了许多特征选择算法。本文提出了一种基于神经网络和机器学习的特征选择新方法。这种新算法倾向于突出现有特征中的最佳特征:在神经网络中使用基于加权的输入特征新方法来选择最佳特征。性能表明,该方法选择了模拟数据上的最佳功能。

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