Genetic Diagnosis of Cancer by Evolutionary Fuzzy-Rough based Neural-Network Ensemble

S. Dash, B. Patra
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引用次数: 7

Abstract

High dimension and small sample size is an inherent problem of gene expression datasets which makes the analysis process more complex. The present study has developed a novel learning scheme that encapsulates a hybrid evolutionary fuzzy-rough feature selection model with an adaptive neural net ensemble. Fuzzy-rough method deals with uncertainty and impreciseness of real valued gene expression dataset and evolutionary search concept optimizes the subset selection process. The efficiency of the hybrid-FRGSNN model is evaluated by the proposed neural net ensemble learning algorithm. Again to prove the learning capability of ensemble algorithm, performance of the component classifiers pairing with FR, GSNN and FRGSNN are compared with proposed hybrid-FRGSNN based ensemble model. In addition to this, efficiency of neural net ensemble is compared with two classical and one advanced ensemble learning algorithms.
基于进化模糊粗糙神经网络集成的癌症遗传诊断
高维数和小样本是基因表达数据集的固有问题,这使得分析过程更加复杂。本研究开发了一种新的学习方案,该方案将混合进化模糊-粗糙特征选择模型与自适应神经网络集成封装在一起。模糊粗糙法处理了实值基因表达数据集的不确定性和不精确性,进化搜索概念优化了子集选择过程。利用所提出的神经网络集成学习算法对混合- frgsnn模型的有效性进行了评价。为了再次证明集成算法的学习能力,将配对FR、GSNN和FRGSNN的分量分类器的性能与所提出的基于混合FRGSNN的集成模型进行比较。此外,还比较了神经网络集成与两种经典集成学习算法和一种先进集成学习算法的效率。
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