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首页> 外文期刊>International Journal of Applied Engineering Research >Feature Selection Using Fuzzy Information Measure
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Feature Selection Using Fuzzy Information Measure

机译:使用模糊信息测量的功能选择

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摘要

The information is filled with various data sources and it generates over 2.5 quintillion bytes every day from communication devices, consumer transactions, online behaviour, social media and streaming services. To overcome this difficulty irrelevant and redundant data are to be removed using the technique called feature selection. The goal of the feature selection is to find the minimum set of attribute. The results are implemented by MATLAB and WEKA tool for feature selection and classification respectively. This research work is validated using different datasets namely Pima Diabetic, Breast Cancer, Ecoli, Iris, Sonar and Student which are available in UCI repository. Model performance is evaluated by using Precision, Recall and F-Measure performance metrics. The experimental inference reveals that the proposed algorithms are efficient in selecting minimum features for the feature subset and gives higher accuracy rate.
机译:这些信息填充有各种数据源,并且每天从通信设备,消费者交易,在线行为,社交媒体和流媒体服务生成超过2.5千万千万字节。 为了克服这种困难,使用称为特征选择的技术删除无关紧要的数据。 特征选择的目标是找到最小的属性集。 结果由Matlab和Weka工具实现,分别用于特征选择和分类。 使用不同的数据集即可验证本研究,即PIMA糖尿病,乳腺癌,ECOLI,IRIS,SONAR和学生,可在UCI存储库中提供。 通过使用精度,召回和F测量性能指标来评估模型性能。 实验推断揭示了所提出的算法在选择特征子集的最小特征方面是有效的,并提供更高的精度率。

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