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Clustering student skill set profiles in a unit hypercube using mixtures of multivariate betas

机译:使用多元beta的混合物将学生的技能组合概况聚类在一个单元超立方体中

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摘要

This paper presents a finite mixture of multivariate betas as a new model-based clustering method tailored to applications where the feature space is constrained to the unit hypercube. The mixture component densities are taken to be conditionally independent, univariate unimodal beta densities (from the subclass of reparameterized beta densities given by Bagnato and Punzo in Comput Stat 28(4):10.​1007/​s00180-012-367-4, 2013). The EM algorithm used to fit this mixture is discussed in detail, and results from both this beta mixture model and the more standard Gaussian model-based clustering are presented for simulated skill mastery data from a common cognitive diagnosis model and for real data from the Assistment System online mathematics tutor (Feng et al. in J User Model User Adap Inter 19(3):243–266, 2009). The multivariate beta mixture appears to outperform the standard Gaussian model-based clustering approach, as would be expected on the constrained space. Fewer components are selected (by BIC-ICL) in the beta mixture than in the Gaussian mixture, and the resulting clusters seem more reasonable and interpretable.
机译:本文介绍了多元beta的有限混合,这是一种新的基于模型的聚类方法,适用于特征空间受限于单位超立方体的应用。混合物成分的密度被认为是条件独立的单变量单峰β密度(来自Bagnato和Punzo在Comput Stat 28(4):10中给出的重新参数化β密度的子类.1007 / s00180-012-367-4, 2013)。将详细讨论用于拟合此混合物的EM算法,并针对通用认知诊断模型中的模拟技能掌握数据以及Assistance中的真实数据,提供此Beta混合物模型和更标准的基于高斯模型的聚类结果。系统在线数学导师(Feng等人,J用户模型用户Adap Inter 19(3):243–266,2009)。正如在有限空间上所预期的那样,多元beta混合物似乎优于基于标准高斯模型的聚类方法。与高斯混合相比,在β混合中选择的成分更少(通过BIC-ICL),并且得到的簇似乎更加合理和可解释。

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