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Performance of asymmetric links and correction methods for imbalanced data in binary regression

机译:二进制回归中的非对称链路和校正方法的性能

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In binary regression, imbalanced data result from the presence of values equal to zero (or one) in a proportion that is significantly greater than the corresponding real values of one (or zero). In this work, we evaluate two methods developed to deal with imbalanced data and compare them to the use of asymmetric links. The results based on simulation study show, that correction methods do not adequately correct bias in the estimation of regression coefficients and that the models with power links and reverse power considered produce better results for certain types of imbalanced data. Additionally, we present an application for imbalanced data, identifying the best model among the various ones proposed. The parameters are estimated using a Bayesian approach, considering the Hamiltonian Monte-Carlo method, utilizing the No-U-Turn Sampler algorithm and the comparisons of models were developed using different criteria for model comparison, predictive evaluation and quantile residuals.
机译:在二进制回归中,不平衡数据由于存在等于零(或一个)的比例而显着大于一个(或零)的比例而导致的值。在这项工作中,我们评估为处理不平衡数据而开发的两种方法,并将它们与非对称链接进行比较。基于仿真研究的结果,校正方法在回归系数的估计中没有充分校正偏差,并且具有电力链路和反向功率的模型被认为为某些类型的不平衡数据产生更好的结果。此外,我们介绍了一个用于不平衡数据的应用程序,识别所提出的各种模型。考虑到Hamiltonian Monte-Carlo方法,利用No-U-Turn采样器算法和模型的比较,使用不同标准开发了模型比较,预测评估和量子残留的模型的比较来估计参数。

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