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Comparison of four analytic strategies for complex survey data: a case-study of Spanish data.

机译:复杂调查数据的四种分析策略的比较:西班牙数据的案例研究。

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Purpose: The aim of this secondary data analysis was to investigate the effect of four different analytical strategies: Model Based Analysis (MBA), Design Based Analysis (DBA), Multilevel Model Based Analysis (MMBA), and Multilevel Design Based Analysis (MDBA), on the model estimates for complex survey data. Methods: Using data from the World Health Survey-Spain explanatory models for the outcome Metabolic Equivalent of Task (METs) were calculated using MBA, DBA, MMBA, and MDBA. Regression coefficients, standard errors (SE) and the Akaike Information Criterion (AIC) from all the models were compared. Results: DBA showed highest estimates for most of the variables, including consistently higher SE than all other model - 20% to 48% higher than estimates for MBA, 10% to 37% for MMBA and 23% to 35% for MDBA. The SE for MDBA were 2.5% to 13% higher than estimates derived from MMBA in level 1 predictors, but SE in MMBA was higher by 18% for level 2 predictors. Values of AIC suggested the model derived by MDBA was the best fit and DBA the poorest fit of the four models. Conclusion: With minimum AIC, MDBA appeared to be the most appropriate approach to analyze complex survey data. To confirm the finding of present study a future work on a simulation data would be required.
机译:目的:辅助数据分析的目的是研究四种不同分析策略的效果:基于模型的分析(MBA),基于设计的分析(DBA),基于多级模型的分析(MMBA)和基于多级设计的分析(MDBA) ,关于复杂调查数据的模型估算。方法:使用来自世界卫生组织西班牙的解释性模型的数据,使用MBA,DBA,MMBA和MDBA计算任务的代谢当量(METs)。比较了所有模型的回归系数,标准误差(SE)和Akaike信息准则(AIC)。结果:DBA对大多数变量显示出最高的估计值,包括SE始终高于所有其他模型-分别比MBA估计值高20%至48%,MMBA的10%至37%和MDBA的23%至35%。 MDBA的SE比1级预测变量的MMBA估计值高2.5%至13%,而MMBA 2级预测变量的SE则高18%。 AIC的值表明,由MDBA推导的模型是这四个模型的最佳拟合,而DBA则是最差的拟合。结论:以最小的AIC,MDBA似乎是分析复杂调查数据的最合适方法。为了确认本研究的结果,将需要对模拟数据进行进一步的研究。

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