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Active Learning with Efficient Feature Weighting Methods for Improving Data Quality and Classification Accuracy

机译:具有高效特征加权方法的主动学习,用于提高数据质量和分类准确性

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Many machine learning datasets are noisy with a substantial number of mislabeled instances. This noise yields sub-optimal classification performance. In this paper we study a large, low quality annotated dataset, created quickly and cheaply using Amazon Mechanical Turk to crowd-source annotations. We describe computationally cheap feature weighting techniques and a novel non-linear distribution spreading algorithm that can be used to it-eratively and interactively correcting mis-labeled instances to significantly improve annotation quality at low cost. Eight different emotion extraction experiments on Twitter data demonstrate that our approach is just as effective as more computationally expensive techniques. Our techniques save a considerable amount of time.
机译:许多机器学习数据集是嘈杂的,具有大量错误标记的实例。该噪声产生了次优分类性能。在本文中,我们研究了一个大型低质量的注释数据集,使用亚马逊机械土耳其人快速和便宜地创建到人群源注释。我们描述了计算上便宜的特征加权技术和一种新型非线性分配扩展算法,其可用于IT - 无论如何,相互作用地校正错误标记的情况,以显着提高低成本的注释质量。 Twitter数据中的八种不同的情感提取实验表明,我们的方法与更具计算昂贵的技术一样有效。我们的技术节省了相当大的时间。

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