Analysis of machine learning techniques for context extraction

M. Granitzer, Mark Kröll, C. Seifert, Andreas S. Rath, Nicolas Weber, Olivia Dietzel, Stefanie N. Lindstaedt
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引用次数: 24

Abstract

dasiaContext is keypsila conveys the importance of capturing the digital environment of a knowledge worker. Knowing the userpsilas context offers various possibilities for support, like for example enhancing information delivery or providing work guidance. Hence, user interactions have to be aggregated and mapped to predefined task categories. Without machine learning tools, such an assignment has to be done manually. The identification of suitable machine learning algorithms is necessary in order to ensure accurate and timely classification of the userpsilas context without inducing additional workload. This paper provides a methodology for recording user interactions and an analysis of supervised classification models, feature types and feature selection for automatically detecting the current task and context of a user. Our analysis is based on a real world data set and shows the applicability of machine learning techniques.
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上下文提取的机器学习技术分析
dasiaContext是键盘,它传达了捕获知识工作者的数字环境的重要性。了解用户的上下文为支持提供了各种可能性,例如增强信息传递或提供工作指导。因此,必须聚合用户交互并将其映射到预定义的任务类别。如果没有机器学习工具,这样的任务必须手动完成。识别合适的机器学习算法是必要的,以确保在不引起额外工作量的情况下准确及时地对用户的上下文进行分类。本文提供了一种记录用户交互的方法,并分析了用于自动检测用户当前任务和上下文的监督分类模型、特征类型和特征选择。我们的分析基于真实世界的数据集,并展示了机器学习技术的适用性。
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