从未采样数据中提炼分类器

D. Guan, Yongkoo Han, Young-Koo Lee, Sungyoung Lee, Chongkug Park
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引用次数: 0

摘要

对于具有大量训练实例的学习任务,我们抽取一些信息丰富/重要的实例,然后将其用于学习。获得准确的标记数据一直是困难的,因此需要噪声检测来过滤采样实例中的噪声,因为噪声会降低学习性能。在这项工作中,我们建议利用未采样实例来提高采样实例中的噪声检测性能。实证研究验证了我们的想法,即可以利用非采样实例从噪声采样实例中获得精细分类器。
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Refining classifier from unsampled data
For a learning task with a huge number of training instances, we sample some informative/important instances, which are then used for learning. Obtaining accurately labeling data is always difficult thus noise detection is required to filter out noises from sampled instances since the noises will degrade the learning performance. In this work, we propose to utilize unsampled instances to improve the performance of noise detection in sampled instances. Empirical study validates our idea that refined classifier can be achieved from noisy sampled instances by utilizing unsampled instances.
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