Evaluation of missing data imputation methods for human osteometric measurements

Author:

Pang Jinyong1,Liu Xiaoming1ORCID

Affiliation:

1. USF Genomics & College of Public Health University of South Florida Tampa Florida USA

Abstract

AbstractIt is not uncommon for biological anthropologists to analyze incomplete bioarcheological or forensic skeleton specimens. As many quantitative multivariate analyses cannot handle incomplete data, missing data imputation or estimation is a common preprocessing practice for such data. Using William W. Howells' Craniometric Data Set and the Goldman Osteometric Data Set, we evaluated the performance of multiple popular statistical methods for imputing missing metric measurements. Results indicated that multiple imputation methods outperformed single imputation methods, such as Bayesian principal component analysis (BPCA). Multiple imputation with Bayesian linear regression implemented in the R package norm2, the Expectation–Maximization (EM) with Bootstrapping algorithm implemented in Amelia, and the Predictive Mean Matching (PMM) method and several of the derivative linear regression models implemented in mice, perform well regarding accuracy, robustness, and speed. Based on the findings of this study, we suggest a practical procedure for choosing appropriate imputation methods.

Funder

National Institute of Justice

Publisher

Wiley

Subject

Paleontology,Archeology,Genetics,Anthropology,Anatomy,Epidemiology

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