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Adaptive Ensemble and Hybrid Models for Classification of Bioinformatics Datasets

机译:用于生物信息学数据集分类的自适应集成和混合模型

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Clinical databases have accumulated large quantities of information about patients and their clinical histories. Data mining is the search for relationships and patterns within this data that could provide useful knowledge for effective decision-making. Classification analysis is one of the widely adopted data mining techniques for healthcare applications to support and improving the quality of medical diagnosis. This paper presents individual, ensembles and hybrid of computational intelligence techniques such as Support Vector Machine (SVM), Neural Networks (NN), Function Network (FN) and Fuzzy Logic (FL) to classify real bioinformatics datasets. The performance of the proposed computational techniques measured using well known bioinformatics datasets. As expected, the performance of the proposed ensembles and hybrid computational intelligence models is better compared to the monolithic models and overcome the weaknesses of existing classifiers particularly in the classification accuracy.
机译:临床数据库积累了有关患者及其临床历史的大量信息。数据挖掘是在数据中寻找关系和模式,这些关系和模式可以为有效的决策提供有用的知识。分类分析是用于医疗保健应用程序以支持和提高医学诊断质量的广泛采用的数据挖掘技术之一。本文介绍了诸如支持向量机(SVM),神经网络(NN),功能网络(FN)和模糊逻辑(FL)之类的计算智能技术的各个,整体和混合,以对真实的生物信息学数据集进行分类。使用众所周知的生物信息学数据集测得的拟议计算技术的性能。如预期的那样,与整体模型相比,所提出的集成和混合计算智能模型的性能更好,并且克服了现有分类器的弱点,尤其是在分类准确性方面。

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