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A new hybrid stability measure for feature selection

机译:功能选择的新混合稳定性措施

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摘要

Feature Selection (FS) algorithms are applied in bioinformatics applications to identify the disease causing genes. Performance of such algorithms is measured in terms of accuracy of the model and stability of FS algorithms. Stability evaluates the identical replication of feature sets obtained after every execution. Recently research has shown that a stability measure must satisfy set of properties like, fully defined, monotonicity, boundedness, deterministic maximum stability, and correction for chance. Among the existing stability measures, only Nogueira's frequency based stability measure satisfies all the required properties. However, frequency based stability measures fail to discriminate among the cases when overall frequency of features are same. In order to address this issue, the paper proposes a hybrid similarity based stability measure which satisfies all the desirable properties, as mentioned earlier. The proposed stability measure is unique as it is the first similarity based stability measure that satisfies all the required properties. Also, all these essential properties are mathematically established. Further, the paper also proposes a combination of frequency based and similarity based measure which preserves all the aspects of both the approaches. The work presented also analyzes the stability performance of LASSO and Elastic Net, using synthetic and microarray gene expression datasets. Elastic Net depicts higher stability and selection of relevant features.
机译:特征选择(FS)算法应用于生物信息学应用中,以鉴定导致基因的疾病。根据FS算法的模型和稳定性的准确性来测量这种算法的性能。稳定性评估在每次执行之后获得的特征集的相同复制。最近的研究表明,稳定性措施必须满足诸如完全定义,单调,界限,确定性最大稳定性和校正的一组性质。在现有的稳定性措施中,只有Nogueira的基于频率的稳定性措施满足所有所需的特性。然而,当特征的整体频率相同时,基于频率的稳定性措施无法区分。为了解决这个问题,本文提出了一种基于混合相似性的稳定性测量,其满足了所有期望的属性,如前所述。所提出的稳定性测量是独一无二的,因为它是满足所有所需属性的基于第一的稳定性度量。此外,所有这些基本属性都是在数学上建立的。此外,本文还提出了基于频率的基于频率和相似性的措施的组合,其保留了两种方法的所有方面。本作所提供的工作还分析了使用合成和微阵列基因表达数据集的套索和弹性网的稳定性性能。弹性网描绘了更高的稳定性和相关特征的选择。

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