Package: HDRFA 0.1.5

HDRFA: High-Dimensional Robust Factor Analysis

Factor models have been widely applied in areas such as economics and finance, and the well-known heavy-tailedness of macroeconomic/financial data should be taken into account when conducting factor analysis. We propose two algorithms to do robust factor analysis by considering the Huber loss. One is based on minimizing the Huber loss of the idiosyncratic error's L2 norm, which turns out to do Principal Component Analysis (PCA) on the weighted sample covariance matrix and thereby named as Huber PCA. The other one is based on minimizing the element-wise Huber loss, which can be solved by an iterative Huber regression algorithm. In this package we also provide the code for traditional PCA, the Robust Two Step (RTS) method by He et al. (2022) and the Quantile Factor Analysis (QFA) method by Chen et al. (2021) and He et al. (2023).

Authors:Yong He [aut], Lingxiao Li [aut], Dong Liu [aut, cre], Wenxin Zhou [aut]

HDRFA_0.1.5.tar.gz
HDRFA_0.1.5.zip(r-4.7)HDRFA_0.1.5.zip(r-4.6)HDRFA_0.1.5.zip(r-4.5)
HDRFA_0.1.5.tgz(r-4.6-any)HDRFA_0.1.5.tgz(r-4.5-any)
HDRFA_0.1.5.tar.gz(r-4.7-any)HDRFA_0.1.5.tar.gz(r-4.6-any)
HDRFA_0.1.5.tgz(r-4.6-emscripten)
manual.pdf |manual.html
card.svg |card.png
HDRFA/json (API)

# Install 'HDRFA' in R:
install.packages('HDRFA', repos = c('https://ldstat.r-universe.dev', 'https://cloud.r-project.org'))

On CRAN:

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This package does not link to any Github/Gitlab/R-forge repository. No issue tracker or development information is available.

1.00 score 1 scripts 227 downloads 8 exports 8 dependencies

Last updated from:eb0e8c9844. Checks:9 OK. Indexed: yes.

TargetResultTimeFilesSyslog
linux-devel-x86_64OK117
source / vignettesOK181
linux-release-x86_64OK126
macos-release-arm64OK170
macos-oldrel-arm64OK163
windows-develOK88
windows-releaseOK89
windows-oldrelOK93
wasm-releaseOK97

Exports:HPCAHPCA_FNIQRIQR_FNPCAPCA_FNRTSRTS_FN

Dependencies:latticeMASSMatrixMatrixModelspracmaquantregSparseMsurvival