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Automatic Task Classification via Support Vector Machine and Crowdsourcing

机译:通过支持向量机和众包进行自动任务分类

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Automatic task classification is a core part of personal assistant systems that are widely used in mobile devices such as smartphones and tablets. Even though many industry leaders are providing their own personal assistant services, their proprietary internals and implementations are not well known to the public. In this work, we show through real implementation and evaluation that automatic task classification can be implemented for mobile devices by using the support vector machine algorithm and crowdsourcing. To train our task classifier, we collected our training data set via crowdsourcing using the Amazon Mechanical Turk platform. Our classifier can classify a short English sentence into one of the thirty-two predefined tasks that are frequently requested while using personal mobile devices. Evaluation results show high prediction accuracy of our classifier ranging from 82% to 99%. By using large amount of crowdsourced data, we also illustrate the relationship between training data size and the prediction accuracy of our task classifier.
机译:自动任务分类是个人助理系统的核心部分,该系统广泛用于智能手机和平板电脑等移动设备。即使许多行业领导者提供了自己的私人助理服务,但其专有的内部结构和实现方式仍未为公众所熟知。在这项工作中,我们通过实际的实现和评估表明,通过使用支持向量机算法和众包,可以为移动设备实现自动任务分类。为了训练任务分类器,我们使用Amazon Mechanical Turk平台通过众包收集了训练数据集。我们的分类器可以将简短的英语句子分类为使用个人移动设备时经常要求的三十二个预定义任务之一。评估结果表明,我们的分类器具有较高的预测准确性,范围从82%到99%。通过使用大量的众包数据,我们还说明了训练数据大小与任务分类器的预测准确性之间的关系。

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