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Ensemble Features Selection Algorithm by Considering Features Ranking Priority

机译:集合功能选择算法考虑特征排名优先

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Feature selection is a pre-processing for choosing relevant features and ignores features that tend to have no predictive information. Feature selection is applied to improve the accuracy of classification process. High relevant features have a tendency to get high classification performance. This paper proposed the ensemble of multiple feature ranking techniques by considering ranker priority for feature selection. Five individual feature ranking algorithms (information gain, gain ratio, symmetrical uncertainty, reliefF and oneR) are investigated and considered together as ensemble, based on ranking priority. The lung cancer, lymphoma, breast cancer, ovarian cancer and leukemia datasets were gathered from Kent Ridge bio-medical data and Machine Learning data repository. The datasets are applied to ensemble features selection algorithm. The obtained results are compared to results from individual feature ranking algorithms and the existing ensemble algorithm. The selected features are applied to classification algorithms. Area under the curve (AUC), precision and recall values from six classification algorithms are used to evaluate the obtained features. The experimental results show that the selected features from proposed ensemble features selection algorithm are greater than those of individual feature ranking techniques and the existing ensemble features selection algorithm.
机译:特征选择是选择相关功能的预处理,并忽略往往没有预测信息的功能。采用功能选择来提高分类过程的准确性。高相关特征具有获得高分类性能的趋势。本文通过考虑特征选择的Ranker优先级,提出了多个特征排名技术的集合。根据排名优先级,研究了五个单独的特征排名算法(信息增益,增益比,对称的不确定性,Relieff和Oner)。从Kent Ridge Bio-Medical数据和机器学习数据存储库中收集了肺癌,淋巴瘤,乳腺癌,卵巢癌和白血病数据集。数据集应用于集合特征选择算法。将获得的结果与各个特征排名算法和现有集合算法的结果进行比较。所选功能应用于分类算法。在曲线(AUC)下的区域,六种分类算法的精度和召回值用于评估所获得的特征。实验结果表明,来自所选集合特征选择算法的所选特征大于单独的特征排名技术和现有的集合特征选择算法。

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