心理学研究中缺失值处理方法比较
Comparison of Methods for Processing Missing Values in Psychological Research
DOI: 10.12677/AP.2019.911222, PDF,   
作者: 王 安:浙江师范大学杭州幼儿师范学院,浙江 杭州
关键词: 缺失值缺失机制填补方法Missing Value Missing Mechanism Filling Methods
摘要: 数据缺失是一个常见但难以处理的问题。文章简要介绍了数据缺失的几种机制,以及处理缺失数据的一般性方法,并对各种缺失数据的处理方法的特点及适用情况进行了比较。
Abstract: Missing data is a common but difficult problem to deal with. This paper briefly introduces several mechanisms of missing data and some general methods to deal with missing data. And the characteristics of all kinds of missing data processing method and the suitable conditions are compared.
文章引用:王安 (2019). 心理学研究中缺失值处理方法比较. 心理学进展, 9(11), 1843-1849. https://doi.org/10.12677/AP.2019.911222

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