提前一天预测共享单车系统的使用情况

R. Giot, Raphael Cherrier
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引用次数: 58

摘要

自行车共享系统出现在几个现代城市。它们为市民提供了另一种生态的交通方式,使他们能够避免使用私家车,避免大城市中与之相关的所有问题(即交通堵塞、公共交通专用道路等)。然而,由于他们的成功,他们也遇到了其他问题:一些车站可能是满的或空的(即无法下车或骑自行车)。因此,预测这种系统的使用情况对用户来说是很有趣的,可以帮助他/她计划他/她对系统的使用,并减少遭受先前提出的问题的可能性。为了预测共享单车系统的全球使用情况,本文在两年内获得的现有公共数据集上,对最先进的各种回归量进行了分析。以一小时的频率对未来24小时进行预测。结果表明,即使大多数回归因子对过度拟合敏感,表现最好的回归因子也明显优于基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting bikeshare system usage up to one day ahead
Bike sharing systems are present in several modern cities. They provide citizens with an alternative and ecological mode of transportation, allowing them to avoid the use of personal car and all the problems associated with it in big cities (i.e., traffic jam, roads reserved for public transport, ...). However, they also suffer from other problems due to their success: some stations can be full or empty (i.e., impossibility to drop off or take a bike). Thus, to predict the use of such system can be interesting for the user in order to help him/her to plan his/her use of the system and to reduce the probability of suffering of the previously presented issues. This paper presents an analysis of various regressors from the state of the art on an existing public dataset acquired during two years in order to predict the global use of a bike sharing system. The prediction is done for the next twenty-four hours at a frequency of one hour. Results show that even if most regressors are sensitive to over-fitting, the best performing one clearly beats the baselines.
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