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Towards the Automated Evaluation of Crowd Work: Machine-Learning Based Classification of Complex Texts Simplified by Laymen

机译:迈向人群工作的自动化评估:基于机器学习的复杂文本分类(由外行简化)

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The work paradigm of crowd sourcing holds huge potential for organizations by providing access to a large workforce. However, an increase of crowd work entails increasing effort to evaluate the quality of the submissions. As evaluations by experts are inefficient, time-consuming, expensive, and are not guaranteed to be effective, our paper presents a concept for an automated classification process for crowd work. Using the example of crowd generated patent transcripts we build on interdisciplinary research to present an approach to classifying them along two dimensions -- correctness and readability. To achieve this, we identify and select text attributes from different disciplines as input for machine-learning classification algorithms and evaluate the suitability of three well regarded algorithms, Neural Networks, Support Vector Machines and k-Nearest Neighbor algorithms. Key findings are that the proposed classification approach is feasible and the SVM classifier performs best in our experiment.
机译:众包的工作范式通过提供对大量劳动力的访问权,为组织带来了巨大的潜力。但是,人群工作的增加需要更多的工作来评估提交的质量。由于专家的评估效率低下,耗时,昂贵且不能保证有效,因此本文提出了一种针对人群工作的自动分类过程的概念。以人群产生的专利笔录为例,我们在跨学科研究的基础上,提出了一种沿着两个维度对它们进行分类的方法-正确性和可读性。为此,我们从不同学科中识别并选择文本属性作为机器学习分类算法的输入,并评估三种广受好评的算法(神经网络,支持向量机和k最近邻算法)的适用性。主要发现是,所提出的分类方法是可行的,并且SVM分类器在我们的实验中表现最佳。

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