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Forecasting multivariate longitudinal binary data with marginal and marginally specified models

机译:使用边际和边际指定模型预测多元纵向二进制数据

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摘要

Forecasting with longitudinal data has been rarely studied. Most of the available studies are for continuous response and all of them are for univariate response. In this study, we consider forecasting multivariate longitudinal binary data. Five different models including simple ones, univariate and multivariate marginal models, and complex ones, marginally specified models, are studied to forecast such data. Model forecasting abilities are illustrated via a real-life data set and a simulation study. The simulation study includes a model independent data generation to provide a fair environment for model competitions. Independent variables are forecast as well as the dependent ones to mimic the real-life cases best. Several accuracy measures are considered to compare model forecasting abilities. Results show that complex models yield better forecasts.
机译:纵向数据的预测很少研究。现有的大多数研究都是针对连续应答的,而所有研究都是针对单变量应答的。在这项研究中,我们考虑预测多元纵向二进制数据。研究了五种不同的模型来预测这些数据,包括简单模型,单变量和多元边际模型以及复杂模型,边际指定模型。通过实际数据集和模拟研究来说明模型的预测能力。仿真研究包括独立于模型的数据生成,从而为模型竞赛提供公平的环境。预测自变量以及因变量可以最好地模拟现实情况。考虑了几种准确性度量来比较模型预测能力。结果表明,复杂的模型可以产生更好的预测。

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  • 作者

    Asar, Özgür; Ilk, Ozlem;

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  • 年度 2015
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