sparsepca
Sparse Principal Component Analysis (SPCA)
Sparse principal component analysis (SPCA) attempts to find sparse weight vectors (loadings), i.e., a weight vector with only a few 'active' (nonzero) values. This approach provides better interpretability for the principal components in high-dimensional data settings. This is, because the principal components are formed as a linear combination of only a few of the original variables. This package provides efficient routines to compute SPCA. Specifically, a variable projection solver is used to compute the sparse solution. In addition, a fast randomized accelerated SPCA routine and a robust SPCA routine is provided. Robust SPCA allows to capture grossly corrupted entries in the data. The methods are discussed in detail by N. Benjamin Erichson et al. (2018) doi:10.48550/arXiv.1804.00341.
- Version0.1.2
- R versionunknown
- LicenseGPL (≥ 3)
- Needs compilation?No
- Last release04/11/2018
Team
N. Benjamin Erichson
Peng Zheng
Show author detailsRolesAuthorSasha Aravkin
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