通过机器学习算法分析疫情对纽约出租车的影响,并推荐最优预测算法

Zhenguo Liu, Xinjing Xia, Haipeng Zhang, Zihui Xie
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引用次数: 0

摘要

随着经济和人口的增长,城市的交通基础设施面临着停车位不足、交通拥堵等各种挑战。另一种选择是乘坐公共交通工具,并适当利用需求响应型交通工具,如出租车或优步。因此,提高这些响应式运输的效率是有价值的。本研究评估了GBDT、XGBoost和Random forest等不同预测模型对出租车行程时长的预测性能。同时,在修正后的数据中增加了雪况和降水数据,提高了精度。此外,考虑到2020年的Covid-19效应,进行了探索性数据分析和数据挖掘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyze the impact of the epidemic on New York taxis by machine learning algorithms and recommendations for optimal prediction algorithms
With the growth of the economy and population, the transportation infrastructure of cities faces various challenges such as lacks of parking spots and traffic jams. One of the alternatives is to take public transport combined with proper utilization of demand-responsive transport such as Taxi or Uber. Therefore, it is valuable to improve the efficiency of these responsive transport. This research evaluates the predicting performance of different prediction models such as GBDT, XGBoost, and Random forest on taxi trip duration. At the same time, new elements were added to the modified data to contribute a higher accuracy rate including the snow status and precipitation data. Moreover, exploratory data analysis and data mining was conducted taking concerns of the Covid-19 effect of the year 2020.
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