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Uncovering Los Angeles Tourists' Patterns Using Geospatial Analysis and Supervised Machine Learning with Random Forest Predictors

机译:使用地理空间分析和带随机森林预测器的监督机器学习发现洛杉矶游客的模式

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Consumer behavior analytics is at the epicenter of a Big Data revolution. In this paper we propose to analyze intra-regional spatial patterns mining tourists' behaviors and characteristics based on traveling group size with data collected from Airbnb open source focused on Los Angeles neighborhood in 2016. Random Forest Classification (RF) technique, an ensemble approach, is applied to identify the key drivers according to relevant traveler groups and presented patterns using Hotspot Analysis on Geographic Information System (GIS). Our empirical result highlights driving factors within Airbnb listings, providing valuable insights to better plan, monitor and manage tourism activity.
机译:消费者行为分析是大数据革命的核心。在本文中,我们建议使用旅行群规模来分析区域内空间格局,该格局基于游客群体的规模,结合2016年从专注于洛杉矶社区的Airbnb开源中收集的数据进行。随机森林分类(RF)技术,一种集成方法,运用地理信息系统热点分析(GIS),根据相关旅行者组和呈现的模式来识别关键驱动因素。我们的实证结果突出显示了Airbnb列表中的驱动因素,提供了宝贵的见解,可以更好地计划,监控和管理旅游活动。

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