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Demand Prediction of Ride-Hailing Pick-Up Location Using Ensemble Learning Methods

机译:使用集合学习方法需求预测乘车骑行拾取位置

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Ride-hailing and carpooling platforms have become a popular way to move around in urban cities. Based on the principle of matching riders with drivers, with Uber, Lyft and Didi having the largest market share. The challenge remains being able to optimally match rider demand with driver supply, reducing congestion and emissions associated with Vehicle clustering, deadheading, ultimately leading to surge pricing where providers raise the price of the trip in order to attract drivers into such zones. This sudden spike in rates is seen by many riders as disincentive on the service provided. In this paper, data mining techniques are applied to ultimately develop an ensemble learning model based on historical data from City of Chicago Transport provider’s dataset. The objective is to develop a dynamic model capable of predicting rider drop-off location using pick-up location data then subsequently using drop-off location data to predict pick-up points for effective driver deployment under multiple scenarios of privacy and information. Results show neural network algorithms perform best in generalizing pick-up and drop-off points when given only starting point information. Ensemble learning methods, Adaboost and Random forest algorithm are able to predict both drop-off and pick-up points with a MAE of one (1) community area knowing rider pick-up point and Census Tract information only and in reverse predict potential style="font-family:Verdana;">pick-up points using the Drop-off point as the new starting point.
机译:骑行和拼车平台已成为在城市各地传播的流行方式。基于与司机的搭档原则,有优步,Lyft和Didi,市场份额最大。挑战仍然能够用驾驶员供应最佳地匹配骑手需求,减少与车辆聚类相关的拥堵和排放,死头,最终导致提供商提高旅行价格的浪涌定价,以吸引司机进入这些区域。许多骑士在提供的服务上被许多骑手看到的突然飙升。在本文中,应用数据挖掘技术最终基于来自芝加哥市城市的数据集的历史数据来开发集合学习模型。目的是开发一种能够使用拾取位置数据预测骑行者下降位置的动态模型,然后使用下降位置数据来预测在隐私和信息的多种场景下预测有效驱动程序部署的拾取点。结果显示在仅当仅启动点信息时,神经网络算法在概括的拾取点中表现最佳。集合学习方法,Adaboost和随机森林算法能够预测一个(1)个社区区域的MAE的下降和拾取点仅知道骑行者拾取点和人口普查派对信息,并且在反向预测潜在 style =“font-family:verdana;”>使用下降点的提取点作为新起点。

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