Extractive Arabic Text Summarization Using PageRank and Word Embedding
Creators
- 1. Sakarya Univ, Informat Syst Engn, Esentepe Campus, TR-54187 Serdivan, Sakarya, Turkiye
Description
Research on graph-based automatic text summarization for Arabic, the official language of 26 nations with over 200 million speakers, as well as other prevalent languages, has recently increased due to the ability of these approaches to handle linguistic peculiarities such as complex morphological linkages. The present paper proposes a graph-based extractive Arabic text summarization (GEATS) technique that employs word embedding and PageRank algorithms for feature extraction and sentence ordering. The efficiency of the GEATS approach versus the state-of-the-art methods is analyzed based on the quality of the produced summaries over the F-measure values. The findings indicated that it outperformed the nearest alternative by an advantage of over 7.5%.
Files
bib-eb592bf8-9432-442b-8104-48b494bc2863.txt
Files
(167 Bytes)
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