首页 | 本学科首页   官方微博 | 高级检索  
   检索      

K-means、潜在类别模型和混合Rasch模型的比较
引用本文:马文超,边玉芳,郭雯婧,谢敏.K-means、潜在类别模型和混合Rasch模型的比较[J].心理学探新,2014,34(5):431-436.
作者姓名:马文超  边玉芳  郭雯婧  谢敏
作者单位:北京师范大学认知神经科学与学习国家重点实验室,北京,100875
摘    要:基于模拟研究比较了K-means方法、潜在类别模型和混合Rasch模型在二分外显变量情境下的聚类效果.结果表明:(1)潜在类别数量、变量数量、样本量、样本平衡和变量间相关对K-means方法、潜在类别模型和混合Rasch模型的分类准确性均有影响且因素间的交互作用存在;(2)除了在2个潜在类别的样本不平衡条件下K-means方法表现较差外,在其他条件下与潜在类别模型和混合Rasch模型的表现相当;(3)混合Rasch模型的分类一致性在2个潜在类别的情境下要好于潜在类别模型,但是在4个潜在类别的情境下要差于潜在类别模型.

关 键 词:K—means  潜在类别模型  混合Rasch模型  聚类分析  模拟研究

The Comparision among K-means,Latent Class Model and Mixture Rasch Model
Ma Wenchao,Bian Yufang,Guo Wenjing,Xie Min.The Comparision among K-means,Latent Class Model and Mixture Rasch Model[J].Exploration of Psychology,2014,34(5):431-436.
Authors:Ma Wenchao  Bian Yufang  Guo Wenjing  Xie Min
Institution:Ma Wenchao Bian Yufang Guo Wenjing Xie Min (National Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing 100875)
Abstract:Based on Monte Carlo simulation study, this article provides a comparision among K - means, Latent Class Model and Mixture Rasch Model on condition that the observed variables are binary. The results show that( 1 ) the number of latent classes and variables, the sample size, the balance of proportion and the correlation among the variables have impact on the classification and the interaction among these factors exists ; (2) the classification of K - means is poor when the data generated from two latent classes and unblanced population, otherwise, the performance of K - means is similar with the model based approaches; (3) with two latent classes, the performace of Mixture Rasch Model is better than the Latent Class Model but when the latent classes is four,the later is better than the former.
Keywords:K - means  Latent Class Model  Mixture Rasch Model  cluster analysis  simulation study
本文献已被 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号