Identifying personalized interventions for an individual is an important task. Recent work has shown that interventions that do not consider the demographic background of individual consumers can, in fact, produce the reverse effect, strengthening opposition to electric vehicles. In this work, we focus on methods for personalizing interventions based on an individual's demographics to shift the preferences of consumers to be more positive towards Battery Electric Vehicles (BEVs). One of the constraints in building models to suggest interventions for shifting preferences is that each intervention can influence the effectiveness of later interventions. This, in turn, requires many subjects to evaluate effectiveness of each possible intervention. To address this, we propose to identify personalized factors influencing BEV adoption, such as barriers and motivators. We present a method for predicting these factors and show that the performance is better than always predicting the most frequent factors. We then present a Reinforcement Learning (RL) model that learns the most effective interventions, and compare the number of subjects required for each approach.
翻译:最近的工作表明,不考虑个人消费者人口背景的干预措施实际上会产生反效果,加强对电动车辆的反对力。在这项工作中,我们侧重于基于个人人口统计的个性化干预措施方法,将消费者的偏好改变为更积极的消费者对电池电车(BEVs)的偏好。在建立模式以建议改变偏好的干预措施时,一个制约因素是,每种干预措施都能够影响后来干预措施的效力。这反过来要求许多主题来评价每一种可能的干预措施的有效性。为了解决这一问题,我们提议确定影响采用BEV的个人化因素,例如障碍和运动器。我们提出了一个预测这些因素的方法,并表明业绩优于总是预测最常见的因素。然后我们提出一种强化学习最有效干预措施的学习模式,并比较每种方法所需的科目的数量。