A class of statistical models to weaken independence in two-way contingency tables
classification
🧮 math.ST
math.AGstat.MEstat.TH
keywords
modelsclasscomputecontingencyindependencestatisticaltablesalgebraic
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In this paper we study a new class of statistical models for contingency tables. We define this class of models through a subset of the binomial equations of the classical independence model. We use some notions from Algebraic Statistics to compute their sufficient statistic, and to prove that they are log-linear. Moreover, we show how to compute maximum likelihood estimates and to perform exact inference through the Diaconis-Sturmfels algorithm. Examples show that these models can be useful in a wide range of applications.
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