标签协议水平和分类准确性

Amal Abdullah Al Mansour
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引用次数: 2

摘要

本文介绍了一个研究数据集质量与分类器性能之间关系的实验。结果表明,具有较少噪声标签的数据集,即标记器之间的一致程度越高,可以获得更好的分类精度结果。为了设置实验,我们将人类注释的阿拉伯语Twitter数据集分为两个级别:低和高多数投票比例。然后,我们报告了这两个层次下的可信度预测精度结果。研究发现,使用标注者之间一致性较低的标记数据集意味着多数投票类别的比例较低,准确率在32% - 50.5%之间,而使用标注者之间一致性较低的标记数据集意味着多数投票类别的比例较低,准确率在62.8% - 66.7%之间。这一发现阐明了通过减少噪声标签的影响来提高标注质量会产生更好的分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Labeling Agreement Level and Classification Accuracy
This paper covers an experiment that investigates the relation between the quality of the dataset and the performance of the classifier. It demonstrates that dataset with less noisy labels, i.e., higher agreement level between labelers can achieve better classification accuracy results. In order to set the experiment, we divided human annotated Arabic Twitter dataset under two levels of majority voting ratio: low and high. Then, we reported the credibility prediction accuracy results under these two levels. It was found that by using labeled dataset with low level of agreement between labelers means low ratio of majority voting class, the accuracy was in the range (32% - 50.5%) whereas with labeled dataset with high percentage of majority voting class, it was between (62.8% - 66.7%). This finding clarifies that improving the quality of labeling by reducing the effect of noisy labels would yield better classification results.
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