Annotating Documents using Active Learning Methods for a Maintenance Analysis Application

James Pope, Mark G. Terwilliger, J. A. Connell, Gabriel Talley, Nicholas Blozik, David Taylor
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Abstract

The aircraft cargo industry still maintains vast amounts of the maintenance history of aircraft components in electronic (i.e. scanned) but unsearchable images. For a given supplier, there can be hundreds of thousands of image documents only some of which contain useful information. Using supervised machine learning techniques has been shown to be effective in recognising these documents for further information extraction. A well known deficiency of supervised learning approaches is that annotating sufficient documents to create an effective model requires valuable human effort. This paper first shows how to obtain a representative sample from a supplier's corpus. Given this sample of unlabelled documents an active learning approach is used to select which documents to annotate first using a normalised certainty measure derived from a soft classifier's prediction distribution. Finally the accuracy of various selection approaches using this certainty measure are compared along each iteration of the active learning cycle. The experiments show that a greedy selection method using the uncertainty measure can significantly reduce the number of annotations required for a certain accuracy. The results provide valuable information for users and more generally illustrate an effective deployment of a machine learning application.
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使用主动学习方法为维护分析应用程序注释文档
航空货运业仍然以电子(即扫描)但无法检索的图像保存大量飞机部件的维修历史。对于给定的供应商,可能有成千上万的图像文档,其中只有一些包含有用的信息。使用监督机器学习技术已被证明在识别这些文档以进一步提取信息方面是有效的。监督学习方法的一个众所周知的缺陷是,注释足够的文档以创建有效的模型需要宝贵的人力。本文首先展示了如何从供应商的语料库中获得具有代表性的样本。给定此未标记文档样本,使用主动学习方法来选择首先注释哪些文档,使用源自软分类器预测分布的归一化确定性度量。最后,在主动学习周期的每次迭代中,比较了使用这种确定性度量的各种选择方法的准确性。实验表明,利用不确定性度量的贪婪选择方法可以显著减少达到一定精度所需的注释数量。结果为用户提供了有价值的信息,并且更普遍地说明了机器学习应用程序的有效部署。
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