基于机器学习的自行车共享需求预测

Pub Date : 2022-01-01 DOI:10.4018/ijban.288513
Tae You Kim, M. Park, J. Shin, Sung-Baik Oh
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引用次数: 1

摘要

在第四次工业革命时期,跨国公司和初创企业将共享经济概念应用于其业务,并试图通过将需求预测结果纳入其业务运营来更好地服务于客户需求。为了在当今激烈的竞争中生存,公司需要升级其预测模型,以更准确的方式更好地预测客户需求。本研究探索了共享单车需求预测模型的一个新特征,该模型提高了RMSLE得分。通过将华盛顿特区地区报告的每日车辆事故数量这一新特征应用于随机森林、XGBoost和LightGBM模型,RMSLE评分结果得到改善。以前的许多研究主要集中在给定数据集中的特征工程和回归技术上。然而,这项研究是有意义的,因为它更侧重于从外部数据源中寻找新的特征。
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Prediction of Bike Share Demand by Machine Learning
In the fourth industrial revolution period, multinational companies and start-ups have applied a sharing economy concept to their business and have attempted to better serve customer demand by integrating demand prediction results into their business operations. For survival amongst today’s fierce competition, companies need to upgrade their prediction model to better predict customer demand in a more accurate manner. This study explores a new feature for bike share demand prediction models that resulted in an improved RMSLE score. By applying this new feature, the number of daily vehicle accidents reported in the Washington, D.C. area, to the Random Forest, XGBoost, and LightGBM models, the RMSLE score results improved. Many previous studies have primarily focused on feature engineering and regression techniques within given dataset. However, this study is meaningful because it focuses more on finding a new feature from an external data source.
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