Title
Analogical Inference for Multi-Relational Embeddings.
Abstract
Large-scale multi-relational embedding refers to the task of learning the latent representations for entities and relations in large knowledge graphs. An effective and scalable solution for this problem is crucial for the true success of knowledge-based inference in a broad range of applications. This paper proposes a novel framework for optimizing the latent representations with respect to the textit{analogical} properties of the embedded entities and relations. By formulating the learning objective in a differentiable fashion, our model enjoys both theoretical power and computational scalability, and significantly outperformed a large number of representative baseline methods on benchmark datasets. Furthermore, the model offers an elegant unification of several well-known methods in multi-relational embedding, which can be proven to be special instantiations of our framework.
Year
Venue
DocType
2017
ICML
Conference
Volume
Citations 
PageRank 
abs/1705.02426
23
0.78
References 
Authors
33
3
Name
Order
Citations
PageRank
Hanxiao Liu134418.35
Yuexin Wu2995.78
Yiming Yang35390500.59