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An online updating method for time-varying preference learning

机译:时变偏好学习的在线更新方法

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The rapid proliferation of smart, personal technologies has given birth to smart Transportation Demand Management (TDM) systems that can give personalized incentives to users. This personalization capacity builds on accurate modeling of user behaviors; however, in practice, a user's behavior data is often limited, and his preferences in the discrete choice-making process may change or evolve. In this paper, we propose a new online-updating model that can accurately and efficiently estimate an individual's preferences from his discrete choices. Our model is built on the concept of canonical structure, where a set of canonical models are identified as the common preference patterns shared by the whole population, and a membership vector is also identified for each individual to capture the degrees of the resemblance of his preferences to those common preference patterns. To allow preference to vary in the choice-making process, a time-varying model can be integrated with the canonical structure. In the current study, we use a simple cubic polynomial model with a single variant and show the detailed formulation of the integrated model. An online-updating strategy is also proposed, such that it is possible to update the parameters partially in practice. The proposed model is suitable for modeling a heterogeneous population with insufficient data from each individual. Both simulation studies and a real-world application are taken in the current study. The results show that comparing with other frequently used models, the model we proposed has the highest accuracy in preference learning and behavior prediction.
机译:智能的快速增殖,个人技术赋予了智能运输需求管理(TDM)系统,可以向用户提供个性化激励。这种个性化能力建立在准确的用户行为建模;然而,在实践中,用户的行为数据通常是有限的,并且他在离散选择过程中的偏好可能改变或发展。在本文中,我们提出了一个新的在线更新模型,可以准确和有效地估计个人的离散选择的偏好。我们的模型建立在规范结构的概念上,其中一组规范模型被识别为整个人口共享的共同共享的常见偏好模式,并且还识别成员向量,为每个人捕获他偏好的相似度的程度对于那些共同的偏好模式。为了允许偏好在选择制造过程中变化,可以与规范结构集成时变模型。在目前的研究中,我们使用简单的立方多项式模型,具有单个变体,并显示集成模型的详细配方。还提出了在线更新策略,使得可以部分地在实践中更新参数。所提出的模型适用于对来自每个人的数据不足的异质群体建模。仿真研究和现实世界申请都在目前的研究中进行。结果表明,与其他常用模型相比,我们提出的模型在偏好学习和行为预测中具有最高的准确性。

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