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Improving the Performance of SVM-RFE to Select Genes in Microarray Data

机译:提高SVM-RFE在芯片数据中选择基因的性能

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Background Recursive Feature Elimination is a common and well-studied method for reducing the number of attributes used for further analysis or development of prediction models. The effectiveness of the RFE algorithm is generally considered excellent, but the primary obstacle in using it is the amount of computational power required. Results Here we introduce a variant of RFE which employs ideas from simulated annealing. The goal of the algorithm is to improve the computational performance of recursive feature elimination by eliminating chunks of features at a time with as little effect on the quality of the reduced feature set as possible. The algorithm has been tested on several large gene expression data sets. The RFE algorithm is implemented using a Support Vector Machine to assist in identifying the least useful gene(s) to eliminate. Conclusion The algorithm is simple and efficient and generates a set of attributes that is very similar to the set produced by RFE.
机译:背景递归特征消除是一种通用且经过充分研究的方法,用于减少用于进一步分析或开发预测模型的属性数量。 RFE算法的有效性通常被认为是出色的,但是使用它的主要障碍是所需的计算能力。结果在这里,我们介绍了RFE的一种变体,它采用了模拟退火的思想。该算法的目标是通过一次消除特征块来提高递归特征消除的计算性能,而对简化特征集的质量影响尽可能小。该算法已在多个大型基因表达数据集上进行了测试。使用支持向量机来实现RFE算法,以帮助识别要消除的最不有用的基因。结论该算法简单高效,并且生成的属性集与RFE产生的属性集非常相似。

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