Expanding Tidy Data Principles to Facilitate Missing Data Exploration, Visualization and Assessment of Imputations
Monash University · The Kids Research Institute Australia · +1 more institution
Indexed incrossrefdoaj
Abstract
Despite the large body of research on missing value distributions and imputation, there is comparatively little literature with a focus on how to make it easy to handle, explore, and impute missing values in data. This paper addresses this gap. The new methodology builds upon tidy data principles, with the goal of integrating missing value handling as a key part of data analysis workflows. We define a new data structure, and a suite of new operations. Together, these provide a connected framework for handling, exploring, and imputing missing values. These methods are available in the R package naniar.
Citation impact
219
total citations
- FWCI
- 63.78
- Percentile
- 100%
- References
- 54
Citations per year
Authors
2Topics & keywords
Topics
Keywords
- Missing data
- Imputation (statistics)
- Computer science
- Suite
- Workflow
- Data mining
- Visualization
- Data science
No related works found for this paper.