面向共享单车智能交通的可解释机器学习

Simon Onen, Marvin Ggaliwango, Samuel Mugabi, Joyce Nabende
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引用次数: 2

摘要

近年来,共享单车的好处越来越明显,世界各地的城市都受益于道路资源利用率的提高、交通拥堵的减少和城市机动性的提高。事实证明,共享单车是一种必不可少的交通方式,也是智慧城市倡议的基石。为了确保共享单车服务提供商能够为客户提供最佳体验,掌握每个站点可用自行车总数的准确信息至关重要,因为自行车短缺造成的不平衡会对服务产生负面影响。虽然之前的许多研究都使用机器学习技术来预测需求,但很少有人解决这些模型是如何做出预测的。本研究的重点是开发可解释和可解释的模型来预测自行车总数。我们采用线性回归(LR)、支持向量回归(SVR)、随机森林(RF)和梯度增强回归(GBR)等一系列回归方法来准确预测共享单车服务中自行车的分布。我们的方法使用探索性数据分析(EDA)、模型选择、验证和可解释的人工智能(XAI)来提供对模型预测的清晰透明的解释。为了评估模型,使用了行业标准指标,如平均绝对误差、均方误差和R2评分。该报告显示,平均R2得分为99%,证明了该模型在准确预测共享单车服务中的自行车总数方面的有效性。所使用的方法为预测自行车分布提供了一个透明和可解释的方法,这可以帮助共享单车服务提供商为他们的客户提供最佳服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable Machine Learning for Intelligent Transportation in Bike-Sharing
In recent years, the benefits of bike-sharing have become increasingly clear, with cities around the world benefiting from increased road resource utilisation, reduced traffic congestion, and improved urban mobility. Bike-sharing has proven to be an essential mode of transportation and a cornerstone of smart city initiatives. To ensure that bike-sharing service providers can provide an optimal experience to their customers, it is crucial to have accurate information about the total number of bikes available at each station, as imbalances caused by bike shortages can negatively impact the service. While many previous studies have used machine learning techniques to predict demand, few have addressed how these models make their predictions.This study focuses on developing explainable and interpretable models for predicting the total number of bikes. We employ a range of regression methods, including Linear Regression (LR), Support Vector Regression (SVR), Random Forest (RF), and Gradient Boosting Regressor (GBR), to accurately forecast the distribution of bikes in a bike-sharing service. Our approach uses Exploratory Data Analysis (EDA), model selection, validation, and Explainable Artificial Intelligence (XAI) to provide a clear and transparent interpretation of the model predictions.To evaluate the models, industry-standard metrics such as Mean Absolute Error, Mean Squared Error, and R2 Score were used. The report showed an outstanding average R2 Score of 99%, demonstrating the efficacy of the models in accurately predicting the total number of bikes in a bike-sharing service. The approach used offers a transparent and interpretable methodology for predicting bike distribution, which can aid bike-sharing service providers in providing optimal service to their customers.
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