Methods for Handling Missing Data in the Behavioral Neurosciences: Don’t Throw the Baby Rat out with the Bath Water
نویسندگان
چکیده
Missing data are a major problem in the behavioral neurosciences, particularly when data collection is costly. Often researchers exclude cases with missing data, which can result in biased estimates and reduced power. Trying to avoid the deletion of a case because of a missing data point can be conducted, but implementing a naïve missing data method can result in distorted estimates and incorrect conclusions. New approaches for handling missing data have been developed but these techniques are not typically included in undergraduate research methods texts. The topic of missing data techniques would be useful for teaching research methods and for helping students with their research projects. This paper aimed to illustrate that estimating missing data is often more efficacious than complete case analysis, otherwise known as listwise deletion. Longitudinal data was obtained from an experiment examining the effects of an anorectic drug on food consumption in a small sample (n=17) of rats. The complete dataset was degraded by removing a percentage of datapoints (1-5%, 10%). Four missing data techniques: listwise deletion, mean substitution, regression, and expectation-maximization (EM) were applied to all six datasets to ensure that each approach was applied to the same missing data points. P-values, effect sizes, and Bayes factors were computed. Results demonstrated listwise deletion was the least effective method. EM and regression imputation were the preferred methods when more than 5% of the data were missing. Based on these findings it is recommended that researchers avoid using listwise deletion and consider alternative missing data techniques.
منابع مشابه
Do Not Throw Out the Baby with the Bath Water:Alternative Ways of Explaining theLatin American Crisis in the Spanish for Business Classroom
متن کامل
The continuing role of prostate-specific antigen as a marker for localized prostate cancer: 'do not throw the baby out with the bath water'.
متن کامل
Investigating the missing data effect on credit scoring rule based models: The case of an Iranian bank
Credit risk management is a process in which banks estimate probability of default (PD) for each loan applicant. Data sets of previous loan applicants are built by gathering their data, and these internal data sets are usually completed using external credit bureau’s data and finally used for estimating PD in banks. There is also a continuous interest for bank to use rule based classifiers to b...
متن کاملResponse to Packard: make sure we do not throw out the biological baby with the statistical bath water when performing allometric analyses.
متن کامل
مقایسه روش الگوریتم EM و روشهای متداول جانهی دادههای گمشده: مطالعهروی پرسشنامه خوددرمانی بیماران دیابتی
Background and Objectives: Missing data is a big challenge in the research. According to the type of the study and of the variables, different ways have been proposed to work with these data. This study compared five popular imputation approaches in addressing missing data in the questionnaires. Methods: In this study, 500 questionnaires were used for self-medication in diabetic patients. Mi...
متن کامل