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Efficient Classification of Cancer using Support Vector Machines and Modified Extreme Learning Machine based on Analysis of Variance Features | Science Publications

机译:基于方差特征分析的支持向量机和改进的极限学习机对癌症进行有效分类科学出版物

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> Problem statement: The primary objective is to propose efficient cancer classification techniques which provide reliable and significant classification accuracy. To achieve this primary research goal is to find the smallest set of genes that can ensure high accuracy in classification using supervised machine learning algorithms. The significance of finding the minimum subset is three fold: (a) The computational burden and noise arising from irrelevant genes are much reduced; (b) the cost for cancer testing is reduced significantly as it simplifies the gene expression tests to include only a very small number of genes rather than thousands of genes; (c) it calls for more investigation into the probable biological relationship between these small numbers of genes and cancer development and treatment. Approach: The proposed method involves two steps. In the first step, some important genes are chosen with the help of Analysis of Variance (ANOVA) ranking scheme. In the second step, the classification capability is tested for all simple combinations of those important genes using a better classifier. Results: The proposed method initially uses Support Vector Machine (SVM) classifier. Then Modified Extreme Learning Machine classifier is used for increasing the classification accuracy over SVM. Conclusion: The two datasets are used (Lymphoma and Liver cancer) in the experimental result shows that the proposed method performs the cancer classification with better accuracy when compared to the SVM methods.
机译: > 问题陈述:主要目标是提出有效的癌症分类技术,该技术可提供可靠且显着的分类准确性。要实现这一主要研究目标,就是找到最小的基因集,以确保使用监督式机器学习算法进行分类的准确性。找到最小子集的意义有三方面:(a)大大减少了由不相关基因引起的计算负担和噪声; (b)大大降低了癌症测试的成本,因为它简化了基因表达测试,使其只包含非常少的基因,而不包含数千个基因; (c)要求对这些少量基因与癌症发生和治疗之间可能的生物学关系进行更多的研究。 方法:提出的方法包括两个步骤。第一步,借助方差分析(ANOVA)排序方案选择一些重要基因。第二步,使用更好的分类器测试那些重要基因的所有简单组合的分类能力。 结果:所提出的方法最初使用支持向量机(SVM)分类器。然后,将改进的极限学习机分类器用于提高支持向量机的分类精度。 结论:实验结果中使用了两个数据集(淋巴瘤和肝癌),表明与SVM方法相比,该方法对癌症的分类精度更高。

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