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The Sichel model and the mixing and truncation order

机译:Sichel模型以及混合和截断顺序

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The analysis of word frequency count data can be very useful in authorship attribution problems. Zero-truncated generalized inverse Gaussian-Poisson mixture models are very helpful in the analysis of these kinds of data because their model-mixing density estimates can be used as estimates of the density of the word frequencies of the vocabulary. It is found that this model provides excellent fits for the word frequency counts of very long texts, where the truncated inverse Gaussian-Poisson special case fails because it does not allow for the large degree of over-dispersion in the data. The role played by the three parameters of this truncated GIG-Poisson model is also explored. Our second goal is to compare the fit of the truncated GIG-Poisson mixture model with the fit of the model that results from switching the order of the mixing and truncation stages. A heuristic interpretation of the mixing distribution estimates obtained under this alternative GIG-truncated Poisson mixture model is also provided.
机译:词频计数数据的分析在作者身份归属问题中可能非常有用。零截断广义逆高斯-泊松混合模型在分析这类数据时非常有帮助,因为它们的模型混合密度估计值可以用作词汇表单词频率密度的估计值。结果发现,该模型非常适合非常长的文本的单词频率计数,在这种情况下,截断的逆高斯-泊松反常特例失败了,因为它不允许数据出现很大程度的过度分散。还探讨了该截断的GIG-Poisson模型的三个参数所起的作用。我们的第二个目标是将截断的GIG-Poisson混合模型的拟合与由混合和截断阶段的顺序切换得到的模型的拟合进行比较。还提供了在该替代GIG截断的Poisson混合模型下获得的混合分布估计值的启发式解释。

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