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首页> 外文期刊>International Journal of Business Intelligence and Data Mining >A comparison of imputation methods in the presence of imprecise data when employing a neural network s-Sigmoid function
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A comparison of imputation methods in the presence of imprecise data when employing a neural network s-Sigmoid function

机译:使用神经网络s-S型函数时存在不精确数据的插补方法的比较

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摘要

This research addresses the effects of the neural network s-Sigmoid function on Knowledge Discovery of Databases (KDD) in the presence of imprecise data. ANOVA testing and Tukey's Honestly Significant Difference statistics are conducted to investigate the impact of two factors: level of data missingness and imputation method. Data mining is based upon searching the concatenation of multiple databases that usually contain some amount of missing data along with a percentage of inaccurate data and noise. Therefore, analysis depends heavily on the accuracy of the database and on the chosen sample data to be used for model training and testing.
机译:这项研究解决了在存在不精确数据的情况下,神经网络s型乙状结肠功能对数据库知识发现(KDD)的影响。进行了方差分析测试和Tukey的诚实显着差异统计,以研究两个因素的影响:数据丢失的程度和插补方法。数据挖掘基于搜索多个数据库的串联,这些数据库通常包含一定数量的丢失数据以及一定百分比的不准确数据和噪声。因此,分析在很大程度上取决于数据库的准确性以及要用于模型训练和测试的所选样本数据。

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