人类流动性挖掘中一种新的位置分类矩阵

Chetashri Bhadane, K. Shah
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引用次数: 2

摘要

由于易于获得用户的GPS轨迹,因此人体移动挖掘是可行的。基于GPS轨迹点的用户轨迹是挖掘用户移动趋势的原始数据。在处理各种基于位置的应用程序的轨迹数据时,停留点和感兴趣区域(RoI)的识别是最重要的方面之一。停留点和roi是用户花费一些可测量时间并执行某些活动的位置。这些是用户日常生活的重要地点,从用户的角度来看,可能是有趣的地点。每个位置在用户的日常生活中都占有相当重要的地位。寻找这些位置的基本方法之一是分析用户的移动轨迹,从中找到停留点,然后对这些停留点进行聚类。在设计基于移动的应用程序时,现有算法对所有这些已识别的位置给予同等重视。然而,实际上,从用户的角度来看,所有位置都不可能具有相同的重要性。此外,即使保持较少的时间粒度,也有可能在每个移动轨迹中找到像家或工作这样的少数位置。因此,我们提出了一种新的位置分类矩阵LoCMat,根据用户访问每个位置的频率和持续时间,根据位置在用户日常生活中的重要性对其进行分类。确定、保留和分配所有这些地点的适当权重将提高机动采矿的结果。我们已经用真实数据集“Mobi-India”测试了我们提出的矩阵。我们的方法识别有意义的位置,为每个位置分配权重,可以进一步用于流动性挖掘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Matrix for Location Categorization In Human Mobility Mining
Human mobility mining is feasible due to easy availability of the users’ GPS traces. User’s trajectory derived from GPS based track points is the raw data for mining various trends in user mobility. Identification of staypoints and region of interest (RoI) is one of the most important aspects while processing trajectory data for the various location-based application. Staypoints and RoIs are the locations where the user spends some measurable time and performs some activity. These are the important locations of the user’s daily routine and probably interesting locations from the user’s perspective. Each location possesses substantial importance in user’s routine. One of the basic methods to find such locations is to analyze user’s mobility traces to find staypoints from it and then to perform clustering on these staypoints. Existing algorithms gives equal importance to all such identified locations while designing mobility-based applications. However, realistically, all locations cannot have the same importance from the user’s perspective. Also, there are chances to find few locations like home or work almost in each mobility trace even after keeping less time granularity. So, we have proposed a novel location categorization matrix LoCMat to classify location as per their importance in the user’s routine based on frequency and duration of visits to each location. Identifying, retaining and assigning appropriate weightage to all such locations will enhance results of mobility mining. We have tested our proposed matrix with real dataset "Mobi-India". Our method identifies meaningful locations, assigns weightage to each one of them which can be used further for mobility mining.
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