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Multi-Relational Learning with Gaussian Processes

机译:高斯过程的多关系学习

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Due to their flexible nonparametric nature, Gaussian process models are very effective at solving hard machine learning problems. While existing Gaussian process models focus on modeling one single relation, we present a generalized GP model, named multi-relational Gaussian process model, that is able to deal with an arbitrary number of relations in a domain of interest. The proposed model is analyzed in the context of bipartite, directed, and undirected univariate relations. Experimental results on real-world datasets show that exploiting the correlations among different entity types and relations can indeed improve prediction performance.
机译:由于它们灵活的非参数性质,高斯工艺模型在解决硬机学习问题时非常有效。虽然现有的高斯过程模型专注于建模一个单一关系,但我们展示了一个名为多关键高斯的Gaussian进程模型的广义GP模型,能够处理感兴趣领域的任意数量的关系。在二分,指导和无向非变量关系的背景下分析了所提出的模型。实验结果对现实世界数据集显示,利用不同实体类型和关系之间的相关性可以提高预测性能。

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