Title of article :
A Graph-Based Approach for Persian Entity Linking
Author/Authors :
Asgari-Bidhend, Majid Computer Engineering School - Iran University of Science and Technology Tehran, Iran , Fakhrian, Farzane Computer Engineering School - Iran University of Science and Technology Tehran, Iran , Minaei-Bidgoli, Behrouz Computer Engineering School - Iran University of Science and Technology Tehran, Iran
Abstract :
Most of the data on the web is in the form of natural language, but natural language is highly ambiguous, especially when
it comes to the frequent occurrence of entities. The goal of entity linking is to find entity mentions and link them to their corresponding
entities in an external knowledge base. Recently, FarsBase was introduced as the first Persian knowledge base with nearly 750,000
entities. This research suggested one of the first end-to-end unsupervised entity linking systems specifically for Persian, using context
and graph-based features to rank candidate entities. To evaluate the proposed method, we used the first Persian entity-linking dataset
created by crawling social media text from some popular Telegram channels. The ParsEL results show that the F-Score of the input
data set is 87.1% and is comparable to any other entity-linking system that supports Persian.
Keywords :
Social Media Corpus , Knowledge Graph , FarsBase , Persian Language , Entity Disambiguation , Unsupervised Entity Linking
Journal title :
International Journal of Information and Communication Technology Research