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REFA (version 0.2.0)

Robust Exponential Factor Analysis

Description

A robust alternative to the traditional principal component estimator is proposed within the framework of factor models, known as Robust Exponential Factor Analysis, specifically designed for the modeling of high-dimensional datasets with heavy-tailed distributions. The algorithm estimates the latent factors and the loading by minimizing the exponential squared loss function. To determine the appropriate number of factors, we propose a modified rank minimization technique, which has been shown to significantly enhance finite-sample performance. For more detail of Robust Exponential Factor Analysis, please refer to Hu et al. (2026) .

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Version

Install

install.packages('REFA')

Monthly Downloads

144

Version

0.2.0

License

GPL (>= 3)

Maintainer

Jiaqi Hu

Last Published

December 7th, 2025

Functions in REFA (0.2.0)

ECC

Estimation of errors for common component
FA

Principal Component Analysis for Factor Models
REFA

Robust Exponential Factor Analysis
est_num

Estimating Factor Numbers Corresponding PCA
TR

Trace ratios
gendata

Data generation process
REFA_FN

Estimating Factor Numbers via Modified Rank Minimization