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Research on the Forecast of Shared Bicycle Rental Demand Based on Spark Machine Learning Framework

机译:基于Spark机器学习框架的共享自行车租赁需求预测研究。

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In recent years, the shared bicycle project has developed rapidly. In use of shared bicycles, a great deal of user riding information is recorded. How to extract effective knowledge from these vast amounts of information, how to use this knowledge to improve the shared bicycle system, and how to improve the user experience, are problems to solve. Citi Bike is selected as the research target. Data on Citi Bike's user historical behavior, weather information, and holiday information are collected from three different sources, and converted into appropriate formats for model training. Spark MLlib is used to construct three different predictive models, advantages and disadvantages of different forecasting models are compared. Some techniques are used to enhance the accuracy of random forests model. The experimental results show that the root mean square error RMSE of the final model is reduced from 305.458 to 243.346.
机译:近年来,共享自行车项目发展迅速。在使用共享自行车时,会记录大量的用户骑行信息。如何从这些大量信息中提取有效知识,如何使用这些知识来改进共享自行车系统以及如何改善用户体验是需要解决的问题。花旗自行车被选为研究对象。从三个不同的来源收集有关Citi Bike用户历史行为,天气信息和假日信息的数据,并将其转换为用于模型训练的适当格式。 Spark MLlib用于构建三种不同的预测模型,比较了不同预测模型的优缺点。一些技术被用来提高随机森林模型的准确性。实验结果表明,最终模型的均方根误差RMSE从305.458降低到243.346。

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