Publikation
The Use of Data-driven Transformations and Their Applicability in Small Area Estimation
Datum 16. Februar 2021
In general, researchers have been using data transformations as a go-to tool to assist scientific work under the classical and linear mixed regression models instead of developing new theories, applying complex methods or extending software functions. However, transformations are often automatically and routinely applied without considering different aspects on their utility. This work summarizes the main findings from the paper by the author (Rojas-Perilla, 2018), which presents a unified theory of datadriven transformations for linear and linear mixed regression models that includes applications to small area prediction and the development of open source software.
Author: Prof. Dr. Natalia Rojas-Perilla
Article published in "WISTA – Scientific Journal", 1-2021