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首页> 外文期刊>Journal of computer sciences >RADIAL BASIS FUNCTION NETWORK DEPENDENT EXCLUSIVE MUTUAL INTERPOLATION FOR MISSING VALUE IMPUTATION | Science Publications
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RADIAL BASIS FUNCTION NETWORK DEPENDENT EXCLUSIVE MUTUAL INTERPOLATION FOR MISSING VALUE IMPUTATION | Science Publications

机译:径向基函数网络依赖互斥插值法科学出版物

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> The success of data mining relies on the purity of the data set. Before performing the data mining, the data has to be cleaned. An unprocessed data set may contain noisy or missing values which is a critical research issue in the pre-processing stage. Imputation methods are being used to solve the missing value problems. In this proposed work, a machine learning based imputation method is proposed by using the mutual information by exclusively interpolating two different section of the same dataset. For designing the proposed model, a radial basis function based neural network has been used. The performance of the proposed algorithm has been measured with respect to different rate or percentage of missing values in the data set and the results has been compared with existing simple and efficient imputation methods also. To evaluate the performance, the standard WDBC data set has been used. The proposed algorithm performs well and was able to impute the missing values even in the worst cases with more than 50% of missing values. Instead of using simple quality measure such as Mean Square Error (MSE) to evaluate the imputed data quality, in this study, the quality is measured in terms of classification performance. The results arrived were more significant and comparable.
机译: >数据挖掘的成功取决于数据集的纯度。在执行数据挖掘之前,必须清除数据。未处理的数据集可能包含嘈杂的值或缺失的值,这是预处理阶段的关键研究问题。插补方法正用于解决价值缺失问题。在这项拟议的工作中,通过互斥通过互斥同一数据集的两个不同部分,提出了一种基于机器学习的插补方法。为了设计所提出的模型,已经使用了基于径向基函数的神经网络。针对数据集中缺失率的不同比率或百分比测量了所提出算法的性能,并将结果与​​现有的简单有效插补方法进行了比较。为了评估性能,已使用标准WDBC数据集。所提出的算法性能良好,即使在最坏的情况下,缺失值超过50%时,也能够估算缺失值。在本研究中,不是使用诸如均方误差(MSE)之类的简单质量度量来评估估算数据的质量,而是根据分类性能来度量质量。得出的结果更为有意义且具有可比性。

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