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Algebraic exact inference for rater agreement models

机译:评估者协议模型的代数精确推断

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In recent years, a method for sampling from conditional distributions for categorical data has been presented by Diaconis and Sturmfels. Their algorithm is based on the algebraic theory of toric ideals which are used to create so called "Markov Bases". The Diaconis-Sturmfels algorithm leads to a non-asymptotic Monte Carlo Markov Chain algorithm for exact inference on some classes of models, such as log-linear models. In this paper we apply the Diaconis-Sturmfels algorithm to a set of models arising from the rater agreement problem with special attention to the multi-rater case. The relevant Markov bases are explicitly computed and some results for simplify the computation are presented. An extended example on a real data set shows the wide applicability of this methodology.
机译:近年来,Diaconis和Sturmfels提出了一种从条件分布中获取分类数据的方法。他们的算法基于复曲面理想的代数理论,该理论用于创建所谓的“马尔可夫基础”。 Diaconis-Sturmfels算法导致了一种非渐近的蒙特卡洛马尔可夫链算法,可精确推断某些类型的模型,例如对数线性模型。在本文中,我们将Diaconis-Sturmfels算法应用于由评估者一致性问题引起的一组模型,并特别注意多评估者的情况。明确计算了相关的马尔可夫基数,并给出了一些简化计算的结果。实际数据集上的扩展示例显示了该方法的广泛适用性。

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