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SparseM: A Sparse Matrix Package for R
Roger Koenker, Pin Ng
Business, The W.A. Franke College of (CoB)
Research output
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Contribution to journal
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Article
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peer-review
31
Scopus citations
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Keyphrases
Sparse Matrices
100%
Performance Improvement
50%
Model Fitting
50%
Linear Algebra
50%
Fitting Function
50%
Design Matrix
50%
Memory Consumption
50%
Sparse Design
50%
Least Square Method
50%
Computational Speed
50%
Large Sparse Matrices
50%
Mathematics
Sparse Matrix
100%
Linear Algebra
33%
Least Square
33%
Design Matrix
33%
Linear Models
33%
Fitting Function
33%
Square Method
33%