Farspredict: A benchmark dataset for link prediction
- URL: http://arxiv.org/abs/2303.14647v1
- Date: Sun, 26 Mar 2023 07:41:26 GMT
- Title: Farspredict: A benchmark dataset for link prediction
- Authors: Najmeh Torabian, Behrouz Minaei-Bidgoli and Mohsen Jahanshahi
- Abstract summary: This paper proposes "Farspredict" a Persian knowledge graph based on Farsbase.
It also explains how the knowledge graph structure affects link prediction accuracy in KGE.
- Score: 6.866104126509981
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Link prediction with knowledge graph embedding (KGE) is a popular method for
knowledge graph completion. Furthermore, training KGEs on non-English knowledge
graph promote knowledge extraction and knowledge graph reasoning in the context
of these languages. However, many challenges in non-English KGEs pose to
learning a low-dimensional representation of a knowledge graph's entities and
relations. This paper proposes "Farspredict" a Persian knowledge graph based on
Farsbase (the most comprehensive knowledge graph in Persian). It also explains
how the knowledge graph structure affects link prediction accuracy in KGE. To
evaluate Farspredict, we implemented the popular models of KGE on it and
compared the results with Freebase. Given the analysis results, some
optimizations on the knowledge graph are carried out to improve its
functionality in the KGE. As a result, a new Persian knowledge graph is
achieved. Implementation results in the KGE models on Farspredict outperforming
Freebases in many cases. At last, we discuss what improvements could be
effective in enhancing the quality of Farspredict and how much it improves.
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