Predicting human-driving behavior to help driverless vehicles drive: random intercept Bayesian Additive Regression Trees

Y. V. Tan, C. Flannagan, M. Elliott
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引用次数: 22

Abstract

The development of driverless vehicles has spurred the need to predict human driving behavior to facilitate interaction between driverless and human-driven vehicles. Predicting human driving movements can be challenging, and poor prediction models can lead to accidents between the driverless and human-driven vehicles. We used the vehicle speed obtained from a naturalistic driving dataset to predict whether a human-driven vehicle would stop before executing a left turn. In a preliminary analysis, we found that BART produced less variable and higher AUC values compared to a variety of other state-of-the-art binary predictor methods. However, BART assumes independent observations, but our dataset consists of multiple observations clustered by driver. Although methods extending BART to clustered or longitudinal data are available, they lack readily available software and can only be applied to clustered continuous outcomes. We extend BART to handle correlated binary observations by adding a random intercept and used a simulation study to determine bias, root mean squared error, 95% coverage, and average length of 95% credible interval in a correlated data setting. We then successfully implemented our random intercept BART model to our clustered dataset and found substantial improvements in prediction performance compared to BART and random intercept linear logistic regression.
预测人类驾驶行为以帮助无人驾驶汽车驾驶:随机截距贝叶斯加性回归树
无人驾驶汽车的发展刺激了预测人类驾驶行为的需求,以促进无人驾驶汽车和人类驾驶汽车之间的互动。预测人类驾驶动作可能具有挑战性,而糟糕的预测模型可能导致无人驾驶汽车和人类驾驶汽车之间发生事故。我们使用从自然驾驶数据集获得的车速来预测人类驾驶的车辆是否会在左转前停车。在初步分析中,我们发现与其他各种最先进的二元预测方法相比,BART产生的变量更少,AUC值更高。然而,BART假设独立的观测值,但我们的数据集由多个观测值组成,这些观测值按驾驶员聚类。虽然将BART扩展到集群或纵向数据的方法是可用的,但它们缺乏现成的软件,只能应用于集群连续结果。我们通过添加随机截距扩展BART来处理相关的二元观测,并使用模拟研究来确定相关数据设置中的偏差、均方根误差、95%覆盖率和95%可信区间的平均长度。然后,我们成功地将我们的随机截距BART模型应用于我们的聚类数据集,并发现与BART和随机截距线性逻辑回归相比,预测性能有了实质性的提高。
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