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CMLS (version 1.0-1)

Constrained Multivariate Least Squares

Description

Solves multivariate least squares (MLS) problems subject to constraints on the coefficients, e.g., non-negativity, orthogonality, equality, inequality, monotonicity, unimodality, smoothness, etc. Includes flexible functions for solving MLS problems subject to user-specified equality and/or inequality constraints, as well as a wrapper function that implements 24 common constraint options. Also does k-fold or generalized cross-validation to tune constraint options for MLS problems. See ten Berge (1993, ISBN:9789066950832) for an overview of MLS problems, and see Goldfarb and Idnani (1983) for a discussion of the underlying quadratic programming algorithm.

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Version

Install

install.packages('CMLS')

Monthly Downloads

848

Version

1.0-1

License

GPL (>= 2)

Maintainer

Nathaniel Helwig

Last Published

March 31st, 2023

Functions in CMLS (1.0-1)

const

Print or Return Constraint Options for cmls
MsplineBasis

M-Spline Basis for Polynomial Splines
cv.cmls

Cross-Validation for cmls
CMLS-package

tools:::Rd_package_title("CMLS")
CMLS-internal

Internal 'CMLS' Functions
mlsun

Multivariate Least Squares with Unimodality (and E/I) Constraints
cmls

Solve a Constrained Multivariate Least Squares Problem
mlsei

Multivariate Least Squares with Equality/Inequality Constraints
IsplineBasis

I-Spline Basis for Monotonic Polynomial Splines