利用XGBoost算法提高雅加达捷运系统的客运预测效率

Muhammad Alfathan Harriz, Nurhaliza Vania Akbariani, Harlis Setiyowati, Handri Santoso
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引用次数: 0

摘要

这项研究是基于一种被称为XGBoost的机器学习算法。我们使用XGBoost算法来预测雅加达公共交通系统的容量。使用从雅加达开放数据网站获得的2020-2021年期间的预处理原始数据作为训练媒介,我们实现了平均绝对百分比误差为69。然而,在对模型进行微调后,MAPE显著降低了28.99%,为49.97。研究发现,XGBoost算法在检测数据模式和趋势方面非常有效,可以通过提供有价值的见解来改进路线和规划未来的研究。在未来的研究中,额外的数据点,如假期和天气条件,可能会进一步提高模型的准确性。由于实施了XGBoost,雅加达的交通系统可以优化资源利用,改善客户服务,从而提高乘客满意度。未来的研究可能会受益于额外的数据点,如假期和天气条件,以提高XGBoost的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing the Efficiency of Jakarta's Mass Rapid Transit System with XGBoost Algorithm for Passenger Prediction
This study is based on a machine learning algorithm known as XGBoost. We used the XGBoost algorithm to forecast the capacity of Jakarta's mass transit system. Using preprocessed raw data obtained from the Jakarta Open Data website for the period 2020-2021 as a training medium, we achieved a mean absolute percentage error of 69. However, after the model was fine-tuned, the MAPE was significantly reduced by 28.99% to 49.97. The XGBoost algorithm was found to be effective in detecting patterns and trends in the data, which can be used to improve routes and plan future studies by providing valuable insights. It is possible that additional data points, such as holidays and weather conditions, will further enhance the accuracy of the model in future research. As a result of implementing XGBoost, Jakarta's transportation system can optimize resource utilization and improve customer service in order to improve passenger satisfaction. Future studies may benefit from additional data points, such as holidays and weather conditions, in order to improve XGBoost's efficiency.
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