File R-guidedPLS.spec of Package R-guidedPLS
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# Spec file for package guidedPLS
# This file is auto-generated using information in the package source,
# esp. Description and Summary. Improvements in that area should be
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%global packname guidedPLS
%global rlibdir %{_libdir}/R/library
Name: R-%{packname}
Version: 1.1.0
Release: 0
Summary: Supervised Dimensional Reduction by Guided Partial Least Squares
Group: Development/Libraries/Other
License: MIT + file LICENSE
URL: http://cran.r-project.org/web/packages/%{packname}
Source: guidedPLS_1.1.0.tar.gz
Requires: R-base
Requires: R-irlba
# %%if 0%%{?sle_version} > 120400 || 0%%{?is_opensuse}
# # Three others commonly needed
# BuildRequires: tex(ae.sty)
# BuildRequires: tex(fancyvrb.sty)
# BuildRequires: tex(inconsolata.sty)
# BuildRequires: tex(natbib.sty)
# %else
# BuildRequires: texlive
# %endif
# BuildRequires: texinfo
BuildRequires: fdupes
BuildRequires: R-base
BuildRequires: R-irlba
Suggests: R-fields
Suggests: R-geigen
Suggests: R-knitr
Suggests: R-rmarkdown
Suggests: R-testthat
%description
Guided partial least squares (guided-PLS) is the combination of partial
least squares by singular value decomposition (PLS-SVD) and guided
principal component analysis (guided-PCA). This package provides
implementations of PLS-SVD, guided-PLS, and guided-PCA for supervised
dimensionality reduction. The guided-PCA function (new in v1.1.0)
automatically handles mixed data types (continuous and categorical) in
the supervision matrix and provides detailed contribution analysis for
interpretability. For the details of the methods, see the reference
section of GitHub README.md <https://github.com/rikenbit/guidedPLS>.
%prep
%setup -q -c -n %{packname}
# the next line is needed, because we build without --clean in between two packages
rm -rf ~/.R
%build
%install
mkdir -p %{buildroot}%{rlibdir}
%{_bindir}/R CMD INSTALL -l %{buildroot}%{rlibdir} %{packname}
test -d %{packname}/src && (cd %{packname}/src; rm -f *.o *.so)
rm -f %{buildroot}%{rlibdir}/R.css
%fdupes -s %{buildroot}%{rlibdir}
#%%check
#%%{_bindir}/R CMD check %%{packname}
%files
%dir %{rlibdir}/%{packname}
%doc %{rlibdir}/%{packname}/DESCRIPTION
%{rlibdir}/%{packname}/INDEX
%license %{rlibdir}/%{packname}/LICENSE
%{rlibdir}/%{packname}/Meta
%{rlibdir}/%{packname}/NAMESPACE
%doc %{rlibdir}/%{packname}/NEWS
%{rlibdir}/%{packname}/R
%{rlibdir}/%{packname}/doc
%doc %{rlibdir}/%{packname}/help
%doc %{rlibdir}/%{packname}/html
%changelog