Joint Embedding Learning of Educational Knowledge Graphs

As an efficient model for knowledge organization, the knowledge graph has been widely adopted in several fields, e.g., biomedicine, sociology, and education. And there is a steady trend of learning embedding representations of knowledge graphs to facilitate knowledge graph construction and downstrea...

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Veröffentlicht in:arXiv.org 2019-12
Hauptverfasser: Yao, Siyu, Wang, Ruijie, Shen, Sun, Bu, Derui, Liu, Jun
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Bu, Derui
Liu, Jun
description As an efficient model for knowledge organization, the knowledge graph has been widely adopted in several fields, e.g., biomedicine, sociology, and education. And there is a steady trend of learning embedding representations of knowledge graphs to facilitate knowledge graph construction and downstream tasks. In general, knowledge graph embedding techniques aim to learn vectorized representations which preserve the structural information of the graph. And conventional embedding learning models rely on structural relationships among entities and relations. However, in educational knowledge graphs, structural relationships are not the focus. Instead, rich literals of the graphs are more valuable. In this paper, we focus on this problem and propose a novel model for embedding learning of educational knowledge graphs. Our model considers both structural and literal information and jointly learns embedding representations. Three experimental graphs were constructed based on an educational knowledge graph which has been applied in real-world teaching. We conducted two experiments on the three graphs and other common benchmark graphs. The experimental results proved the effectiveness of our model and its superiority over other baselines when processing educational knowledge graphs.
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subjects Computer Science - Artificial Intelligence
Computer Science - Computation and Language
Computer Science - Learning
Construction
Education
Embedding
Graphical representations
Graphs
Knowledge
Knowledge representation
Learning
Sociology
Witnesses
title Joint Embedding Learning of Educational Knowledge Graphs
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