> Personal mobility data can nowadays be easily collected by personal mobile phones and used for analytical modeling. To assist in such an analys'/> A survey of evaluation methods for personal route and destination prediction from mobility traces
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A survey of evaluation methods for personal route and destination prediction from mobility traces

机译:移动迹线个人路线和目的地预测评价方法调查

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> Personal mobility data can nowadays be easily collected by personal mobile phones and used for analytical modeling. To assist in such an analysis, a variety of computational approaches have been developed. The goal is to extract mobility patterns in order to provide traveling assistance, information, recommendations or on‐demand services. While various computational techniques are being developed, research literature on destination and route prediction lacks consistency in evaluation methods for such approaches. This study presents a review and categorization of evaluation criteria and terminology used in assessing the performance of such methods. The review is complemented by experimental analysis of selected evaluation criteria, to highlight the nuances existing between the evaluation measures. The experimental study uses previously unpublished mobility data of 15 users collected over a period of 6 months in Helsinki metropolitan area in Finland. The article is primarily intended for researchers developing approaches for personalized mobility analysis, as well as a guideline for practitioners to select criteria when assessing and selecting between computational approaches. Our main recommendation is to consider user‐specific accuracy measures in addition to averaged aggregates, as well as to take into consideration that for many users accuracy does not saturate fast and the performance keeps evolving over time. Therefore, we recommend using time‐weighted measures. WIREs Data Mining Knowl Discov 2018, 8:e1237. doi: 10.1002/widm.1237 > This article is categorized under: Algorithmic Development Spatial and Temporal Data Mining Application Areas Society and Culture Application Areas Industry Specific Applications
机译: > 现在可以通过个人移动电话轻松收集个人移动数据,并用于分析建模。为了帮助这种分析,已经开发了各种计算方法。目标是提取移动性模式,以便提供旅行辅助,信息,建议或按需服务。虽然正在开发各种计算技术,但目的地和路线预测的研究文献缺乏这种方法的评估方法的一致性。本研究提出了评估评估标准和术语的审查和分类,用于评估这些方法的性能。审查是通过对所选评估标准的实验分析进行补充,以突出评估措施之间存在的细微差异。实验研究使用了在芬兰赫尔辛基大都市区的6个月内收集的15名用户的先前未发表的移动性数据。本文主要用于研究人员开发个性化移动性分析方法,以及从业者在评估和选择计算方法之间选择标准的指导方针。我们的主要建议是考虑除了平均的聚合之外,还要考虑用户特定的准确性措施,以及考虑到许多用户的准确性不饱和,并且性能随着时间的推移而不断发展。因此,我们建议使用时间加权措施。 电线数据挖掘知识iscov 2018,8:E1237。 DOI:10.1002 / WIDM.1237 > 本文分类为: 算法开发&空间和时间数据挖掘 应用领域&社会和文化 应用领域&行业特定应用

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