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首页> 外文期刊>Journal of the Royal Statistical Society >Multilevel multivariate modelling of legislative count data, with a hidden Markov chain
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Multilevel multivariate modelling of legislative count data, with a hidden Markov chain

机译:带有隐藏马尔可夫链的立法计数数据的多级多变量建模

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摘要

The production of legislative acts is affected by multiple sources of latent heterogeneity, due to multilevel and multivariate unobserved factors that operate in conjunction with observed covariates at all the levels of the data hierarchy. We account for these factors by estimating a multilevel Poisson regression model for repeated measurements of bivariate counts of executive and ordinary legislative acts, enacted under multiple Italian governments, nested within legislatures. The model integrates discrete bivariate random effects at the legislature level and Markovian sequences of discrete bivariate random effects at the government level. It can be estimated by a computationally feasible expectation-maximization algorithm. It naturally extends a traditional Poisson regression model to allow for multiple outcomes, longitudinal dependence and multilevel data hierarchy. The model is exploited to detect multiple cycles of legislative supply that arise at multiple timescales in a case-study of Italian legislative production.
机译:立法行为的产生受到潜在异质性多种来源的影响,这是由于多层次和多变量未观察到的因素与在数据层次结构的所有层次上观察到的协变量一起起作用。我们通过估计一个多层Poisson回归模型来解释这些因素,该模型用于重复测量由多个意大利政府制定,嵌套在立法机关中的行政和普通立法行为的双变量计数。该模型集成了立法机构级别的离散双变量随机效应和政府级别的离散双变量随机效应的马尔可夫序列。可以通过计算上可行的期望最大化算法进行估计。它自然地扩展了传统的Poisson回归模型,以实现多种结果,纵向依赖性和多层数据层次结构。该模型可用于检测意大利立法生产案例研究中多个时间尺度上出现的多个立法供应周期。

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