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Path Prediction through Data Mining

机译:通过数据挖掘路径预测

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摘要

Context-awareness is viewed as one of the most important aspects in the emerging ubiquitous computing paradigm. However, mobile applications are required to operate in pervasive computing environments of dynamic nature. Such applications predict the appropriate context in their environment in order to act efficiently. A context model, which deals with the location prediction of moving users, is proposed. Such model is used for trajectory classification through machine learning techniques. Hence, spatial and spatiotemporal context prediction is regarded as context classification based on supervised learning. Finally, two classification schemes are presented, evaluated and compared with other ML schemes in order to support location prediction and decision making.
机译:背景意识被视为新兴普遍存在的计算范例中最重要的方面之一。然而,移动应用程序需要在动态性质的普及计算环境中运行。这些应用程序预测其环境中的适当背景,以有效行动。提出了一种涉及移动用户的位置预测的上下文模型。这种模型用于通过机器学习技术进行轨迹分类。因此,空间和时空上下文预测被认为是基于监督学习的上下文分类。最后,呈现了两个分类方案,与其他ML方案进行了评估,并比较,以支持位置预测和决策。

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