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A simulation study for count data models under varying degrees of outliers and zeros

机译:在不同程度的离群值和零值下的计数数据模型的仿真研究

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摘要

This study was aimed at examining the performance of count data models under various outliers and zero inflation situations with simulated data. Poisson, Negative Binomial, Zero-inflated Poisson, Zero-inflated Negative Binomial, Poisson Hurdle and Negative Binomial Hurdle models were considered to test how well each of the model fits the selected datasets having outliers and excess zeros. We found that Zero-inflated Negative Binomial and Negative Binomial Hurdle models were found to be more successful than other count data models. Also the results indicated that in some scenarios, the Negative Binomial model outperformed other models in the presence of outliers and/or excess zeros.
机译:这项研究旨在通过模拟数据检验计数数据模型在各种异常值和零膨胀情况下的性能。考虑了泊松,负二项式,零膨胀泊松,零膨胀负二项式,泊松跨度和负二项式跨度模型,以测试每个模型对具有离群值和过量零的所选数据集的拟合程度。我们发现零膨胀负二项式和负二项式障碍模型比其他计数数据模型更成功。结果还表明,在某些情况下,如果存在异常值和/或过多的零,则负二项式模型的性能优于其他模型。

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