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Model based clustering of large data sets: Tracing the development of spelling ability

机译:大数据集基于模型的聚类:跟踪拼写能力的发展

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摘要

There are two main theories with respect to the development of spelling ability: the stage model and the model of overlapping waves. In this paper exploratory model based clustering will be used to analyze the responses of more than 3500 pupils to subsets of 245 items. To evaluate the two theories, the resulting clusters will be ordered along a developmental dimension using an external criterion. Solutions for three statistical problems will be given: (1) an algorithm that can handle large data sets and only renders non-degenerate clusters; (2) a goodness of fit test that is not affected by the fact that the number of possible response vectors by far out-weights the number of observed response vectors; and (3) a new technique,data expunction, that can be used to evaluate goodness-of-fit tests if the missing data mechanism is known.
机译:关于拼写能力发展的主要理论有两种:阶段模型和重叠波模型。在本文中,基于探索性模型的聚类将用于分析3500多名学生对245个项目的子集的响应。为了评估这两种理论,将使用外部准则沿发展维度对所得聚类进行排序。将给出三个统计问题的解决方案:(1)一种可以处理大型数据集并且仅呈现非退化聚类的算法; (2)拟合优度测试,不受可能的响应向量的数量远大于观察到的响应向量的数量这一事实的影响; (3)一种新技术,即数据删除,如果已知丢失的数据机制,则可用于评估拟合优度测试。

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