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REGULARIZED LATENT CLASS ANALYSIS WITH APPLICATION IN COGNITIVE DIAGNOSIS

机译:正则化潜类分析及其在认知诊断中的应用

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摘要

Diagnostic classification models are confirmatory in the sense that the relationship between the latent attributes and responses to items is specified or parameterized. Such models are readily interpretable with each component of the model usually having a practical meaning. However; parameterized diagnostic classification models are sometimes too simple to capture all the data patterns, resulting in significant model lack of fit. In this paper, we attempt to obtain a compromise between interpretability and goodness of fit by regularizing a latent class model. Our approach starts with minimal assumptions on the data structure, followed by suitable regularization to reduce complexity, so that readily interpretable, yet flexible model is obtained. An expectation–maximization-type algorithm is developed for efficient computation. It is shown that the proposed approach enjoys good theoretical properties. Results from simulation studies and a real application are presented.
机译:诊断分类模型在潜在属性和对项目的响应之间的关系已指定或参数化的意义上是确定的。这样的模型很容易解释,模型的每个部分通常具有实际意义。然而;参数化诊断分类模型有时过于简单,无法捕获所有数据模式,从而导致模型严重缺乏拟合度。在本文中,我们试图通过规范化潜在类模型来在可解释性和拟合优度之间取得折衷。我们的方法从对数据结构的最小假设开始,然后进行适当的正则化以降低复杂性,从而获得易于解释但灵活的模型。开发了期望最大化类型算法以进行有效计算。结果表明,该方法具有良好的理论性能。给出了仿真研究和实际应用的结果。

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