Conceptual Persian Text Summarizer: A New Model in
Continuous Vector Space
Mohammad Ebrahim Khademi,
Mohammad Fakhredanesh, and Seyed Mojtaba Hoseini
Faculty of Electrical and Computer Engineering, Malek
Ashtar University of Technology, Iran
Abstract: Traditional methods of summarization are not
cost-effective and possible today. Extractive summarization is a process that
helps to extract the most important sentences from a text automatically, and
generates a short informative summary. In this work, we propose a novel
unsupervised method to summarize Persian texts. The proposed method adopt a hybrid
approach that clusters the concepts of the text using deep learning and
traditional statistical methods. First we produce a word embedding based on
Hamshahri2 corpus and a dictionary of word frequencies. Then the proposed
algorithm extracts the keywords of the document, clusters its concepts, and
finally ranks the sentences to produce the summary. We evaluated the proposed
method on Pasokh single-document corpus using the ROUGE evaluation measure.
Without using any hand-crafted features, our proposed method achieves better
results than the state-of-the-art related work results. We
compared our unsupervised method with the best supervised Persian methods and
we achieved an overall improvement of ROUGE-2 recall score of 7.5%.
Keywords: Extractive Text Summarization,
Unsupervised Learning, Language Independent Summarization, Continuous Vector
Space, Word Embedding, Natural Language Processing.
Received
September 17, 2018; accepted Febreuary 5 , 2020