Missing Data Analysis
Roderick J Little, Roderick J Little
Abstract
Methods for handling missing data in clinical psychology studies are reviewed. Missing data are defined, and a taxonomy of main approaches to analysis is presented, including complete-case and available-case analysis, weighting, maximum likelihood, Bayes, single and multiple imputation, and augmented inverse probability weighting. Missingness mechanisms, which play a key role in the performance of alternative methods, are defined. Approaches to robust inference, and to inference when the mechanism is potentially missing not at random, are discussed.
Keywords: ignorable missing data; incomplete data; informative missingness; likelihood inference; missing at random; missingness mechanism; partially missing at random.
Source: PubMed
即将进行的临床试验
-
Jiangsu Province (Suqian) Hospital尚未招聘心血管疾病 | 中风 | 高血压 | 脑缺血 | 短暂性脑缺血发作 | 脑出血中国
-
University of ManitobaCanadian Institutes of Health Research (CIHR)招聘中血液透析 | 精神健康 | 与健康相关的生活质量 | 精神保健 | 透析症状和焦虑加拿大
-
Riphah International University招聘中
-
Riphah International University招聘中
-
Riphah International University招聘中
-
Universidad Nacional Andres Bello招聘中肩锁关节脱位 | Acromioclavicular Joint Injury智利
-
Riphah International University招聘中
-
Riphah International University招聘中
-
Riphah International University招聘中
-
Riphah International University招聘中
-
Riphah International University招聘中