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Choosing the number of clusters in a finite mixture model using an exact integrated completed likelihood criterion

机译:使用精确的完整完成似然准则在有限混合模型中选择簇数

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The integrated completed likelihood (ICL) criterion has proven to be a very popular approach in model-based clustering through automatically choosing the number of clusters in a mixture model. This approach effectively maximises the complete data likelihood, thereby including the allocation of observations to clusters in the model selection criterion. However for practical implementation one needs to introduce an approximation in order to estimate the ICL. Our contribution here is to illustrate that through the use of conjugate priors one can derive an exact expression for ICL and so avoiding any approximation. Moreover, we illustrate how one can find both the number of clusters and the best allocation of observations in one algorithmic framework. The performance of our algorithm is presented on several simulated and real examples.
机译:通过自动选择混合模型中的聚类数,已证明集成完成似然(ICL)准则是基于模型的聚类中非常流行的方法。这种方法有效地使完整数据的可能性最大化,从而在模型选择标准中将观察值分配给聚类。但是,对于实际实现,需要引入一个近似值以估计ICL。我们在这里的贡献是说明通过使用共轭先验,可以得出ICL的精确表达式,从而避免了任何近似。此外,我们说明了如何在一种算法框架中既可以找到聚类的数量,又可以找到观测值的最佳分配。我们的算法的性能在几个模拟的和真实的例子中都有介绍。

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