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A Novel Nonparametric Multiple Imputation Algorithm for Estimating Missing Data

机译:一种估计缺失数据的新型非参数多重估算算法

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The treatment of incomplete data is an important step in pre-processing data prior to later analysis. We propose a novel non-parametric multiple imputation algorithm for estimating missing value. The proposed algorithm is based on Generalized Regression Neural Networks. We compare the proposed algorithm against existing algorithms on forty-five real and synthetic datasets. The effectiveness of imputation algorithms is evaluated in classification problems. The performance of proposed algorithm appears to be superior to that of other algorithms.
机译:对不完全数据的处理是在稍后分析之前预处理数据的重要步骤。我们提出了一种用于估计缺失值的新型非参数多重估算算法。该算法基于广义回归神经网络。我们将建议的算法与四十五个真实和合成数据集进行了对现有算法的比较。估算算法的有效性在分类问题中评估。所提出的算法的性能似乎优于其他算法。

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