游客时空运动的序列模式挖掘

Q4 Multidisciplinary
Maria Isabel Abucejo, Jovelyn C. Cuizon
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引用次数: 0

摘要

本研究旨在开发一个软件应用程序来捕获旅游活动信息,通过顺序模式挖掘(SPM)从数据集中提取运动模式,并将时空运动可视化。通过扫描每个旅游景点独特的QR(快速响应)代码,通过众包轨迹运动捕获旅游活动信息。AprioriAll算法用于寻找游客访问的频繁轨迹模式。得到的最大k序列及其子序列表示推荐的行程。空间和时间的运动分别通过流程图和热图可视化。流程图中的有向边显示了推荐的旅游景点顺序。热图显示了不同地区在不同时间间隔内的旅游密度。该应用程序由选定的旅游规划专家进行验证,以验证功能的适用性、可用性和可接受性。实验结果表明,该应用程序达到了用户的期望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Pattern Mining of Tourist Spatiotemporal Movement
The study aimed to develop a software application to capture tourist activity information, extract movement patterns from the dataset through sequential pattern mining (SPM), and visualize spatiotemporal movement. Tourist activity information was captured through crowdsourced trajectory movements by scanning unique QR (Quick Response) codes for each visited tourist spots. The AprioriAll algorithm was used to find frequent trajectory patterns on tourist visits. The resulting maximal k-sequences and their subsequences represent the recommended trip itinerary. The spatial and temporal movements were visualized through a flow map and a heat map, respectively. The directed edges in the flow map show the recommended sequence of tourist sites to visit. The heat map shows the density of tourist visits in different areas at time intervals. The application was validated with selected tour planning experts to verify functional suitability, usability, and acceptability. Experimental results show positive indicators that the application met the users’ expectations.
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
19
审稿时长
8 weeks
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