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A Cooperative Feature Gene Extraction Algorithm that Combines Classification and Clustering

机译:合作特征基因提取算法,结合了分类和聚类

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In feature gene selection, filtering model concerns classification accuracy while ignoring gene redundancy problem. On the other hand, gene clustering finds correlated genes without considering their predictive abilities. It is valuable to enhance their performances by the help of each other. We report a new feature gene extraction algorithm, namely Double-thresholding Extraction of Feature Gene (DEFG), that combines gene filtering and gene clustering. It firstly pre-select feature gene set from the original dataset. A modified gene clustering is then applied to refine this set. In the gene clustering, specific designs are employed to balance the predictive abilities and the redundancies of the extracted feature gene. We have tested DEFG on a microarray dataset and compared its performance with that of two benchmark algorithms. The experimental results show that DEFG is superior to them in terms of internal validation accuracy and external validation accuracy. Also, DEFG can generalize the pattern structure by a small number of training samples.
机译:在特征基因选择中,过滤模型涉及分类准确性,同时忽略基因冗余问题。另一方面,基因聚类在不考虑其预测能力的情况下发现相关基因。通过彼此的帮助来增强他们的表演是有价值的。我们报告了一种新的特征基因提取算法,即双阈值的特征基因提取(Defg),其结合了基因滤波和基因聚类。首先预先选择从原始数据集中设置的功能基因。然后应用修饰的基因聚类以改进该组。在基因聚类中,使用特定设计来平衡提取的特征基因的预测能力和冗余。我们在微阵列数据集上测试了Defg,并将其与两个基准算法的性能进行了比较。实验结果表明,在内部验证精度和外部验证精度方面,DEFG优于它们。此外,Defg可以通过少量训练样本概括图案结构。

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