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A comparative study on machine learning based algorithms for prediction of motorcycle crash severity

机译:基于机器学习的摩托车碰撞严重程度预测算法的比较研究

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摘要

Motorcycle crash severity is under-researched in Ghana. Thus, the probable risk factors and association between these factors and motorcycle crash severity outcomes is not known. Traditional statistical models have intrinsic assumptions and pre-defined correlations that, if flouted, can generate inaccurate results. In this study, machine learning based algorithms were employed to predict and classify motorcycle crash severity. Machine learning based techniques are non-parametric models without the presumption of relationships between endogenous and exogenous variables. The main aim of this research is to evaluate and compare different approaches to modeling motorcycle crash severity as well as investigating the effect of risk factors on the injury outcomes of motorcycle crashes. Motorcycle crash dataset between 2011 and 2015 was extracted from the National Road Traffic Crash Database at the Building and Road Research Institute (BRRI) in Ghana. The dataset was classified into four injury severity categories: fatal, hospitalized, injured, and damage-only. Three machine learning based models were developed: J48 Decision Tree Classifier, Random Forest (RF) and Instance-Based learning with parameter k (IBk) were employed to model the severity of injury in a motorcycle crash. These machine learning algorithms were validated using 10-fold cross-validation technique. The three machine learning based algorithms were compared with one another and the statistical model: multinomial logit model (MNLM). Also, the relative importance analysis of the attribute was conducted to determine the impact of these attributes on injury severity outcomes. The results of the study reveal that the predictions of machine learning algorithms are superior to the MNLM in accuracy and effectiveness, and the RF-based algorithms show the overall best agreement with the experimental data out of the three machine learning algorithms, for its global optimization and extrapolation ability. Location type, time of the crash, settlement type, collision partner, collision type, road separation, road surface type, the day of the week, and road shoulder condition were found as the critical determinants of motorcycle crash injury severity.
机译:在加纳,对摩托车碰撞严重性的研究不足。因此,尚不清楚可能的危险因素以及这些因素与摩托车碰撞严重程度结果之间的关联。传统的统计模型具有内在的假设和预先定义的相关性,如果受到质疑,则会产生不准确的结果。在这项研究中,基于机器学习的算法被用来预测和分类摩托车碰撞严重性。基于机器学习的技术是非参数模型,没有假定内生变量与外生变量之间的关系。这项研究的主要目的是评估和比较建模摩托车碰撞严重程度的不同方法,以及研究危险因素对摩托车碰撞伤害后果的影响。 2011年至2015年的摩托车事故数据集是从加纳建筑与道路研究所(BRRI)的国家道路交通事故数据库中提取的。该数据集分为四个伤害严重性类别:致命,住院,受伤和仅造成伤害。开发了三种基于机器学习的模型:J48决策树分类器,随机森林(RF)和带有参数k的基于实例的学习(IBk)被用来模拟摩托车碰撞中的伤害严重性。这些机器学习算法使用10倍交叉验证技术进行了验证。将三种基于机器学习的算法相互比较,并将统计模型:多项式logit模型(MNLM)进行了比较。此外,进行了属性的相对重要性分析,以确定这些属性对伤害严重性结果的影响。研究结果表明,机器学习算法的预测在准确性和有效性方面均优于MNLM,基于RF的算法与这三种机器学习算法中的实验数据相比,总体上表现出最佳的整体一致性和外推能力。位置类型,碰撞时间,沉降类型,碰撞对象,碰撞类型,道路分离,路面类型,星期几和路肩状况被发现是摩托车碰撞伤害严重程度的关键因素。

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