4.7 Article

GURLS: A Least Squares Library for Supervised Learning

期刊

JOURNAL OF MACHINE LEARNING RESEARCH
卷 14, 期 -, 页码 3201-3205

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MICROTOME PUBL

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regularized least squares; big data; linear algebra

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We present GURLS, a least squares, modular, easy-to-extend software library for efficient supervised learning. GURLS is targeted to machine learning practitioners, as well as non-specialists. It offers a number state-of-the-art training strategies for medium and large-scale learning, and routines for efficient model selection. The library is particularly well suited for multi-output problems (multi-category/multi-label). GURLS is currently available in two independent implementations: Matlab and C++. It takes advantage of the favorable properties of regularized least squares algorithm to exploit advanced tools in linear algebra. Routines to handle computations with very large matrices by means of memory-mapped storage and distributed task execution are available. The package is distributed under the BSD license and is available for download at https://github.com/LCSL/GURLS.

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