Handling of missing data in psychological research:: Problems and solutions

被引:253
|
作者
Luedtke, Oliver [1 ]
Robitzsch, Alexander [1 ]
Trautwein, Ulrich [1 ]
Koeller, Olaf [1 ]
机构
[1] Max Planck Inst Bildungsforsch, Forsch Bereich Erziehungswissensch & Bildungssyst, D-14195 Berlin, Germany
关键词
missing data; multiple imputation; structural equation modeling;
D O I
10.1026/0033-3042.58.2.103
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
Missing data are a pervasive problem in empirical psychological research. From the methodological perspective, traditional procedures such as Casewise and Pairwise Deletion, Regression Imputation, and Mean Imputation have distinct weaknesses. Yet modem statistical methods for the analysis of datasets with missing values that have been developed in the past three decades have not yet gained a significant foothold in research practice. We begin this article by introducing the basic concepts and terminology of missing data, as proposed by Rubin (1976). We then give an overview of the different approaches to handling missing data discussed in the literature, distinguishing between three types of procedures: traditional procedures (e.g., Listwise Deletion), imputation-based procedures, in which missing values are replaced by imputed values, and model-based procedures, in which models are estimated and missing data handled in a single step. In the empirical section of the article, we demonstrate the application of Multiple Imputation using a dataset from a large-scale educational assessment. Implications for research practice are discussed.
引用
收藏
页码:103 / 117
页数:15
相关论文
共 50 条
  • [41] A primer for handling missing values in the analysis of education and training data
    Gemici, Sinan
    Bednarz, Alice
    Lim, Patrick
    INTERNATIONAL JOURNAL OF TRAINING RESEARCH, 2012, 10 (03) : 233 - 250
  • [42] Techniques for Handling Missing Data in Secondary Analyses of Large Surveys
    Langkamp, Diane L.
    Lehman, Amy
    Lemeshow, Stanley
    ACADEMIC PEDIATRICS, 2010, 10 (03) : 205 - 210
  • [43] Handling missing data: analysis of a challenging data set using multiple imputation
    Pampaka, Maria
    Hutcheson, Graeme
    Williams, Julian
    INTERNATIONAL JOURNAL OF RESEARCH & METHOD IN EDUCATION, 2016, 39 (01) : 19 - 37
  • [44] Hot Deck Multiple Imputation for Handling Missing Accelerometer Data
    Butera, Nicole M.
    Li, Siying
    Evenson, Kelly R.
    Di, Chongzhi
    Buchner, David M.
    LaMonte, Michael J.
    LaCroix, Andrea Z.
    Herring, Amy
    STATISTICS IN BIOSCIENCES, 2019, 11 (02) : 422 - 448
  • [45] A study of handling missing data methods for big data
    Ezzine, Imane
    Benhlima, Laila
    2018 IEEE 5TH INTERNATIONAL CONGRESS ON INFORMATION SCIENCE AND TECHNOLOGY (IEEE CIST'18), 2018, : 498 - 501
  • [46] Bayesian methods for dealing with missing data problems
    Ma, Zhihua
    Chen, Guanghui
    JOURNAL OF THE KOREAN STATISTICAL SOCIETY, 2018, 47 (03) : 297 - 313
  • [47] The randomized marker method for single-case randomization tests: Handling data missing at random and data missing not at random
    De, Tamal Kumar
    Onghena, Patrick
    BEHAVIOR RESEARCH METHODS, 2022, 54 (06) : 2905 - 2938
  • [48] Dealing With Missing Data in Developmental Research
    Enders, Craig K.
    CHILD DEVELOPMENT PERSPECTIVES, 2013, 7 (01) : 27 - 31
  • [49] MULTIPLE IMPUTATION TECHNIQUE: HANDLING MISSING DATA IN REAL WORLD HEALTH CARE RESEARCH
    Suphanchaimat, Rapeepong
    Limwattananon, Supon
    Putthasri, Weerasak
    SOUTHEAST ASIAN JOURNAL OF TROPICAL MEDICINE AND PUBLIC HEALTH, 2017, 48 (03) : 694 - 703
  • [50] The Handling of Missing Data in Molecular Epidemiology Studies
    Desai, Manisha
    Kubo, Jessica
    Esserman, Denise
    Terry, Mary Beth
    CANCER EPIDEMIOLOGY BIOMARKERS & PREVENTION, 2011, 20 (08) : 1571 - 1579