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引用次数: 3

摘要

我们介绍了一种新的基于同时非负矩阵分解的多关系学习算法,能够区分“目标”和“背景”关系,处理不完整数据和所谓的“链接”函数。处理不完整数据的能力使我们能够同时处理关系预测和聚类。此外,非负性约束对于结果簇的可解释性至关重要。我们将我们的方法应用于一个大型乳腺癌数据集,我们发现了5个亚类,这些亚类与该疾病的已知亚分类非常吻合,同时强调了与相应亚型相关的主要生物学过程和基因。
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Multi-relational factorizations for cancer subclassification
We introduce a novel multi-relational learning algorithm based on simultaneous nonnegative matrix factorizations, able to distinguish between “target” and “background” relations, deal with incomplete data and so-called “link” functions. The ability to handle incomplete data allows us to tackle both relation prediction and clustering. Moreover, the nonnegativity constraints are essential for the interpretability of the resulting clusters. We apply our approach to a large breast cancer dataset for which we find 5 subclasses that agree very well with the known subclassification of this disease, while emphasizing the main biological processes and genes involved in the corresponding subtypes.
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