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
다가오는 임상 시험
-
NCT07709767아직 모집하지 않음
-
NCT07709832아직 모집하지 않음약시 | 시각 기능 | Visual Health | Visual Training
-
NCT07709845아직 모집하지 않음
-
NCT07709858모병대동맥 판막 협착증 | 경피적 대동맥 판막 교체(TAVR)
-
NCT07709871아직 모집하지 않음Type 2 Diabetic Nephropathy With Elevated Blood Lead Burden
-
NCT07709884아직 모집하지 않음새로 진단된 다발성 골수종 | 티(11;14) | 카르필 조미 닙 | Sotoclax
-
NCT07709897아직 모집하지 않음
-
NCT07709910아직 모집하지 않음Participants With Obesity and Knee Osteoarthritis
-
NCT07709975모병수술 후 통증 | 여림 | 섬망 - 수술 후 | Postoperative Care in Geriatric Intensive Care Patients