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SMURFF: a High-Performance Framework for Matrix Factorization

Authors :
Aa, Tom Vander
Chakroun, Imen
Ashby, Thomas J.
Simm, Jaak
Arany, Adam
Moreau, Yves
Van, Thanh Le
Dzib, José Felipe Golib
Wegner, Jörg
Chupakhin, Vladimir
Ceulemans, Hugo
Wuyts, Roel
Verachtert, Wilfried
Publication Year :
2019

Abstract

Bayesian Matrix Factorization (BMF) is a powerful technique for recommender systems because it produces good results and is relatively robust against overfitting. Yet BMF is more computationally intensive and thus more challenging to implement for large datasets. In this work we present SMURFF a high-performance feature-rich framework to compose and construct different Bayesian matrix-factorization methods. The framework has been successfully used in to do large scale runs of compound-activity prediction. SMURFF is available as open-source and can be used both on a supercomputer and on a desktop or laptop machine. Documentation and several examples are provided as Jupyter notebooks using SMURFF's high-level Python API.<br />Comment: European Commission Project: EPEEC - European joint Effort toward a Highly Productive Programming Environment for Heterogeneous Exascale Computing (EC-H2020-80151)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1904.02514
Document Type :
Working Paper