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Multi-level Classification: A Generic Classification Method for Medical Datasets

机译:多级分类:医疗数据集的通用分类方法

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Classification of medical data is one of the most challenging pattern recognition problems. As stated in literature a single classifier is unable to solve all medical image classification problems due to high sensitivity to noise and other imperfections like data imbalance. So, several individual classifiers have been studied to solve the different types of classification problems arising in medical datasets but all have proven to be useful on some specific datasets. Hence, in this paper, we propose a generic multi-level classification approach for medical datasets using sparsity based dictionary learning and support vector machine approaches. The proposed technique demonstrates the following advantages: 1) gives better performance of classification accuracy over all datasets 2) solves imbalanced data problems 3) needs no fusion and ensemble methods in multi-level classification. The results presented on the 5 standard UCI medical datasets demonstrate that the efficacy of the proposed multi-level classification technique.
机译:医学数据的分类是最具挑战性的模式识别问题之一。如文学中所述,由于对噪声的高灵敏度和数据不平衡等其他缺陷,单个分类器无法解决所有医学图像分类问题。因此,已经研究了几种单独的分类器来解决医疗数据集中出现的不同类型的分类问题,但已证明在某些特定数据集上有用。因此,在本文中,我们提出了一种使用基于稀疏的字典学习和支持向量机方法的医学数据集通用多级分类方法。所提出的技术表明了以下优点:1)得到的分类精度的更好的性能在所有的数据集2)不平衡数据的问题解决了3)不需要融合和在多级分类集成方法。在5标准UCI医学数据集上呈现的结果表明,所提出的多级分类技术的功效。

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