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Two algorithms for fitting constrained marginal models

机译:拟合约束边际模型的两种算法

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摘要

The two main algorithms that have been considered for fitting constrained marginal models to discrete data, one basedon Lagrange multipliers and the other on a regression model, are studied in detail. It is shown that the updates produced by the two methods are identical, but that the Lagrangian method is more efficient in the case of identically distributed observations. A generalization is given of the regression algorithm for modelling the effect of exogenous individual-level covariates, a context in which the use of the Lagrangian algorithm would be infeasible for even moderate sample sizes. An extension of the method to likelihood-based estimation under L_1-penalties is also considered.
机译:详细研究了考虑将约束边际模型拟合到离散数据的两种主要算法,一种基于拉格朗日乘数,另一种基于回归模型。结果表明,两种方法所产生的更新是相同的,但是在观测分布相同的情况下,拉格朗日方法更为有效。给出了用于建模外生个体水平协变量影响的回归算法的一般化,在这种情况下,即使适度的样本量,使用拉格朗日算法也不可行。还考虑了将方法扩展到L_1惩罚下的基于似然的估计。

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