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Two New Mixture Models: Living With Collinearity but Removing Its Influence

机译:两种新的混合模型:共线性但消除其影响

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Fitting equations to mixture data collected from highly constrained regions has challenged modelers for the past 35 years. Computer roundoff error, low precision of the estimates, and collinearity among the terms in the models are just a few of the problems encountered. It is well known that, due to collinearity, fitted models can contain coefficient estimates with magnitudes many hundreds or even a thousand times greater that the magnitude of the data values themselves. This can be very problematic to the modeler trying to convince a client the model is adequate. Fitting models in pseudocomponents with and without centering the terms has been one of the strategies used in an effort to reduce the effect of collinearity, but often to no avail. We introduce two additional model forms where the terms are scaled, and we illustrate the benefits of fitting the new models using two numerical examples. The equivalence among models of four different, but related, component systems is shown for the first time.
机译:在过去的35年中,将方程拟合到从高度受限的区域收集的混合数据一直对建模人员构成了挑战。计算机舍入误差,估计精度低以及模型中各项之间的共线性只是遇到的一些问题。众所周知,由于共线性,拟合模型可以包含系数估计,其系数大小比数据值本身的大小大数百倍甚至一千倍。对于试图说服客户该模型足够的建模者而言,这可能会带来很大的问题。在具有和不使术语居中的情况下将模型拟合到伪组件中一直是试图减少共线性影响的策略之一,但通常无济于事。我们引入了两个附加的模型形式来对术语进行缩放,并使用两个数值示例说明了拟合新模型的好处。首次显示了四个不同但相关的组件系统的模型之间的等效性。

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