Analysis on the Growth of Shared Bike Users Based on Random Forest Model

Kewei Jiang, Chuanjin Jiang, Wenjun Hou, Yuheng Mo
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Abstract

By analyzing the data set of hourly rental of shared bikes in Washington, D. C., this paper explores how to achieve the growth of shared bike users based on the methods of data mining and visual exploration. In this paper, machine learning models such as ridge regression, lasso regression, support vector machine regression and random forest regression are mainly selected to predict the needs of shared bike users, and then the random forest regression is verified as the optimal model. The result of this article explores the reasonable scheduling of auxiliary resources in the shared bike industry, improves the utilization rate of bicycle resources.
基于随机森林模型的共享单车用户增长分析
本文通过分析华盛顿特区共享单车时租数据集,基于数据挖掘和可视化探索的方法,探讨如何实现共享单车用户的增长。本文主要选取了脊回归、拉索回归、支持向量机回归和随机森林回归等机器学习模型来预测共享单车用户的需求,然后验证了随机森林回归是最优模型。本文的研究成果探索了共享单车行业辅助资源的合理调度,提高了单车资源的利用率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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