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Marginal Maximum Likelihood Estimation of Single Parameter Logistic Based on EM Algorithm

机译:基于EM算法的单个参数逻辑的边缘最大似然估计

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Cluster analysis is one of the most important functions of data mining. Expectation Maximization (EM) method is an important technology based on model clustering method. The expectation maximization algorithm is analyzed in this research and applied to Adaptive Testing System, in which logistic function in item response theory serves as a model, and the combination of methods of marginal maximum likelihood estimation (MMLE) and the EM algorithm are used to estimate the difficulty parameter estimation of single-parameter logistic function. This effort achieves good results.
机译:集群分析是数据挖掘最重要的功能之一。期望最大化(EM)方法是基于模型聚类方法的重要技术。在本研究中分析了期望最大化算法,并应用于自适应测试系统,其中物品响应理论中的逻辑功能用作模型,并且使用边缘最大似然估计(MMLE)的方法和EM算法的组合来估计单参数逻辑函数的难度参数估计。这项努力取得了良好的效果。

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