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Using Markov Chains For Marginal Modellingof Binary Longitudinal Data In An Exact Likelihood Approach

机译:使用Markov链以精确似然法对二进制纵向数据进行边际建模

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The analysis of longitudinal data where the response variable is binary is considered from the point of view of likelihood inference, which requires complete specification of a stochastic model for the individual profile. The problem is tackled using binary Markov chains as the basic stochastic mechanism; this must however be suitably parametrised in order to model the marginal behaviour of the observations. Random effects are also considered, in addition to the above form of serial dependence. The methodology is illustrated with a numerical example.
机译:从似然推断的角度考虑对响应变量为二进制的纵向数据进行分析,这需要对单个配置文件的随机模型进行完整说明。使用二进制马尔可夫链作为基本随机机制解决了该问题。但是,必须对它进行适当的参数设置,以便对观察结果的边际行为建模。除了上述序列依赖形式之外,还考虑了随机效应。通过数值示例说明了该方法。

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