驾驶行为对乘客乘坐出租车舒适度的影响:基于驾驶员评价新视角的研究

Rohit Verma, Sugandh Pargal, Debasree Das, Tanusree Parbat, Sai Shankar Kambalapalli, Bivas Mitra, Sandip Chakraborty
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引用次数: 1

摘要

通勤者乘坐出租车的舒适度会影响司机的评分以及优步/Lyft等叫车公司的声誉。现有的研究表明,通勤舒适度不仅在个人层面上有所不同,而且对于同一通勤者来说,在不同的行程中,通勤舒适度也会有所不同。此外,影响舒适性感知的因素还包括驾驶行为和驾驶环境。由于驾驶行为的影响,自动提取通勤者的感知舒适度对于及时反馈给司机,帮助他们满足通勤者的满意度至关重要。鉴于此,我们调查了大约200名经常乘坐此类出租车的通勤者,并获得了一系列影响出租车乘坐舒适性的特征。在此之后,我们开发了一个系统Ridergo,该系统收集通勤者的智能手机传感器数据,从数据中提取空间时间序列特征,然后计算通勤者的舒适度,并将其分为五分制。Ridergo使用基于分层时间记忆模型的方法来观察特征分布中的异常情况,然后训练基于多任务学习的神经网络模型,以获得个性化水平的通勤者舒适度。该模型还可以智能地查询通勤者,以向可用数据集添加新的数据点,并通过定期训练来改进自身。对30名参与者的评估表明,当驾驶对感知舒适度产生影响时,该系统能够提供高效的舒适度评分,且准确率较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Driving Behavior on Commuter’s Comfort During Cab Rides: Towards a New Perspective of Driver Rating
Commuter comfort in cab rides affects driver rating as well as the reputation of ride-hailing firms like Uber/Lyft. Existing research has revealed that commuter comfort not only varies at a personalized level but also is perceived differently on different trips for the same commuter. Furthermore, there are several factors, including driving behavior and driving environment, affecting the perception of comfort. Automatically extracting the perceived comfort level of a commuter due to the impact of the driving behavior is crucial for a timely feedback to the drivers, which can help them to meet the commuter’s satisfaction. In light of this, we surveyed around 200 commuters who usually take such cab rides and obtained a set of features that impact comfort during cab rides. Following this, we develop a system Ridergo which collects smartphone sensor data from a commuter, extracts the spatial time series feature from the data, and then computes the level of commuter comfort on a five-point scale with respect to the driving. Ridergo uses a Hierarchical Temporal Memory model-based approach to observe anomalies in the feature distribution and then trains a multi-task learning-based neural network model to obtain the comfort level of the commuter at a personalized level. The model also intelligently queries the commuter to add new data points to the available dataset and, in turn, improve itself over periodic training. Evaluation of Ridergo on 30 participants shows that the system could provide efficient comfort score with high accuracy when the driving impacts the perceived comfort.
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