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Breast cancer image classification using pattern-based Hyper Conceptual Sampling method

机译:使用基于模式的超概念采样方法对乳腺癌图像进行分类

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The increase in biomedical data has given rise to the need for developing data sampling techniques. With the emergence of big data and the rise of popularity of data science, sampling or reduction techniques have been assistive to significantly hasten the data analytics process. Intuitively, without sampling techniques, it would be difficult to efficiently extract useful patterns from a large dataset. However, by using sampling techniques, data analysis can effectively be performed on huge datasets, to produce a relatively small portion of data, which extracts the most representative objects from the original dataset. However, to reach effective conclusions and predictions, the samples should preserve the data behavior. In this paper, we propose a unique data sampling technique which exploits the notion of formal concept analysis. Machine learning experiments are performed on the resulting sample to evaluate quality, and the performance of our method is compared with another sampling technique proposed in the literature. The results demonstrate the effectiveness and competitiveness of the proposed approach in terms of sample size and quality, as determined by accuracy and the F1-measure.
机译:生物医学数据的增加引起了对开发数据采样技术的需求。随着大数据的出现和数据科学的普及,采样或归约技术已有助于大幅加快数据分析过程。凭直觉,如果没有采样技术,将很难从大型数据集中有效地提取有用的模式。但是,通过使用采样技术,可以有效地对庞大的数据集进行数据分析,以产生相对较小的数据部分,从而从原始数据集中提取最具代表性的对象。但是,为了得出有效的结论和预测,样本应保留数据行为。在本文中,我们提出了一种独特的数据采样技术,该技术利用了形式概念分析的概念。对所得样本进行机器学习实验以评估质量,并将我们的方法的性能与文献中提出的另一种采样技术进行比较。结果证明了该方法在样本量和质量方面的有效性和竞争力,该方法由准确性和F1量度确定。

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