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Determination of Support Vector Boundaries in Generalized Maximum Entropy for Multilevel Models

机译:用于多级模型广义最大熵的支持向量边界的确定

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Generalized Maximum Entropy (GME) approach is one of the alternative estimation methods for Regression Analysis. GME approach is superior to other classical approaches in terms of parameter estimation accuracy when some or none of the assumptions of classical approaches are violated. However, determining bounds of parameter support vectors is one of the open parts of this approach when researchers have no prior information about the parameters. If support vectors cannot be determined correctly, parameters estimations will not be obtained correctly. There are some theoretical studies about GME for different datasets in the literature, but there are fewer studies about how to determine parameter support vectors. To obtain robust parameter estimations in GME, we introduced a new iterative procedure for determining parameter support vectors bounds for multilevel dataset. In this study, the new iterative procedure was applied for multi-level random intercept model and the new procedure was tested both simulation study and the real life data. The Classical and the new procedures of GME estimations were compared to Generalized Least Square Estimations in terms of Root Mean Square Error (RMSE) statistics. As a result, the estimations of the new approach provided lower RMSE values than classical methods.
机译:广义最大熵(GME)方法是回归分析的替代估计方法之一。当一些或没有侵犯经典方法的假设时,GME方法在参数估计准确性方面优于其他经典方法。然而,当研究人员没有关于参数的先前信息时,参数支持向量的确定范围是这种方法的开放部分之一。如果无法正确确定支持向量,则不会正确获得参数估计。关于文献中不同数据集的GME有一些理论研究,但有关如何确定参数支持向量的研究较少。为了获得GME中的强大参数估计,我们介绍了用于确定多级数据集的参数支持向量的新迭代过程。在本研究中,新的迭代程序应用于多级随机拦截模型,并且测试了新程序,都测试了模拟研究和现实生活数据。将GME估计的古典和新程序与根均方误差(RMSE)统计值方面的广义最小二乘估计进行了比较。结果,新方法的估计比经典方法提供了较低的RMSE值。

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