基于回归分析的共享单车数据需求预测

Muhammad Aadil Butt, Sani Danjuma, M.Saad Bin Ilyas, Umair Muneer Butt, Maimoona Shahid, Iqra Tariq
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引用次数: 0

摘要

为了预测共享单车的需求,本文提出了一种基于规则的回归模型。通勤者和游客都在利用公共自行车共享项目,因为它们提供了方便和低碳足迹。使用来自UCI机器学习存储库的信息。采用重复交叉验证对5个统计模型的超参数进行微调。条件推理树,k近邻分析,正则化随机森林,分类和回归树,以及CUBIST。通过计算均方根误差、r平方、平均绝对误差和系数来衡量回归模型的预测精度。对于首尔自行车和首都自行车共享项目,基于规则的模型CUBIST能够分别解释95%和89%的方差(R2)。使用WEKA v3.8.6从两个数据集构建的所有模型,并使用变量显著性分析来确定哪些变量最重要。决定每小时自行车租赁需求的最重要因素是天气和一天中的时间。
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Demand Prediction on Bike Sharing Data Using Regression Analysis Approach
In order to forecast the need for bike-sharing services, this paper suggests a rule-based regression model. Commuters and tourists alike are taking advantage of public bike sharing programs because of the convenience and low carbon footprint they provide. Used information from the UCI Machine Learning Repository. Repeated cross-validation was used to fine-tune the hyper-parameters of five statistical models. Conditional Inference Tree, K-Nearest Neighbor Analysis, Regularized Random Forest, Classification and Regression Trees, and CUBIST. The predictive accuracy of the regression models was measured by calculating the Root Mean Squared Error, R-Squared, Mean Absolute Error, and Coefficient. For both the Seoul Bike and Capital Bikeshare programs, the rule-based model CUBIST was able to account for 95 and 89% of the Variance (R2), respectively. All models built from the two datasets using WEKA v3.8.6, and are used a variable significance analysis to establish which variables were most crucial. The most important factors in determining the hourly demand for bike rentals are the weather and the time of day.
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