SMURFF:一个高性能的矩阵分解框架

T. Aa, Imen Chakroun, Thomas J. Ashby
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引用次数: 5

摘要

对于推荐系统来说,贝叶斯矩阵分解(BMF)是一种强大的技术,因为它可以产生良好的结果,并且对过拟合具有相对的鲁棒性。然而,BMF的计算量更大,因此对大型数据集的实现更具挑战性。在这项工作中,我们提出了一个高性能的特征丰富的框架SMURFF来组合和构造不同的贝叶斯矩阵分解方法。该框架已成功用于化合物活性预测的大规模运行。SMURFF是开源的,既可以在超级计算机上使用,也可以在台式机或笔记本电脑上使用。文档和几个示例作为Jupyter笔记本提供,使用SMURFF的高级Python API。
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SMURFF: a High-Performance Framework for Matrix Factorization
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.
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