基于人工神经网络的Twitter和Waze地图拥塞关联与分类

Acihmah Sidauruk, Ikmah
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引用次数: 4

摘要

交通拥堵已经成为世界各地城市,尤其是大城市的一个大问题。这使得乘客了解交通状况的信息非常重要。这些信息可以通过社交媒体快速方便地获得,但还不知道。以往的研究主要集中在拥堵数据分类和交通速度速度分析上,而社交媒体上的拥堵信息与实际交通流速度之间的相关性尚未得到研究。在这项研究中,我们将社交媒体数据和收集了1周的交通数据结合起来,并以印度尼西亚日惹的一些主要道路为研究对象,通过社交媒体调查网络空间中的拥堵信息与Waze应用程序中的实际交通速度之间的相关性。本研究结果表明,所有实验的最高精度值为84.01%,最低精度值为0.37%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Congestion Correlation And Classification from Twitter and Waze Map Using Artificial Neural Network
Traffic congestion has become a big problem in cities around the world, especially in big cities. This causes information about traffic conditions very important to be known by the riders. Such information can be obtained quickly and easily through social media, but not yet known. Previous research has largely focused on classifying congestion data and traffic speed velocity analysis, while the correlation between congestion information from social media and actual traffic flow velocity has not been studied. In this study, we combine data from social media and traffic data collected for 1 week and focus on some major roads in Yogyakarta, Indonesia to investigate the correlation between congestion information in cyberspace through social media and actual traffic speed in Waze applications. The results in this study indicate that the highest precision value of all experiments is 84.01%, while the lowest precision value of all experiments is 0.37%.
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