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A TWO-STATE MIXED HIDDEN MARKOV MODEL FOR RISKY TEENAGE DRIVING BEHAVIOR

机译:风险青少年驾驶行为的两状态混合隐马尔可夫模型

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摘要

This paper proposes a joint model for longitudinal binary and count outcomes. We apply the model to a unique longitudinal study of teen driving where risky driving behavior and the occurrence of crashes or near crashes are measured prospectively over the first 18 months of licensure. Of scientific interest is relating the two processes and predicting crash and near crash outcomes. We propose a two-state mixed hidden Markov model whereby the hidden state characterizes the mean for the joint longitudinal crashear crash outcomes and elevated g-force events which are a proxy for risky driving. Heterogeneity is introduced in both the conditional model for the count outcomes and the hidden process using a shared random effect. An estimation procedure is presented using the forward–backward algorithm along with adaptive Gaussian quadrature to perform numerical integration. The estimation procedure readily yields hidden state probabilities as well as providing for a broad class of predictors.
机译:本文针对纵向二进制和计数结果提出了一个联合模型。我们将该模型应用于青少年驾驶的独特纵向研究中,在获得许可的前18个月中,将对潜在的驾驶行为以及发生碰撞或接近碰撞的情况进行前瞻性测量。具有科学意义的是关联这两个过程,并预测碰撞和接近碰撞的结果。我们提出了两种状态的混合隐式马尔可夫模型,其中隐式状态表示关节纵向碰撞/近碰撞结果和升高的g力事件的均值,这些均值代表了危险驾驶。在计数结果的条件模型和使用共享随机效应的隐藏过程中都引入了异质性。提出了一种使用前向后算法与自适应高斯正交函数进行数值积分的估计程序。估计过程很容易得出隐藏状态的概率,并提供了广泛的预测变量。

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