Journal of King Saud University: Computer and Information Sciences (Jun 2022)

TAAM: Topic-aware abstractive arabic text summarisation using deep recurrent neural networks

  • Dimah Alahmadi,
  • Arwa Wali,
  • Sarah Alzahrani

Journal volume & issue
Vol. 34, no. 6
pp. 2651 – 2665

Abstract

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Abstractive text summarisation is essential to producing natural language summaries with main ideas from large text documents. Despite the success of English language-based abstractive text summarisation models in the literature, they are limitedly supporting the Arabic language. Current abstractive Arabic summarisation models have several unresolved issues, a critical one of which is syntax inconsistency, which leads to low-accuracy summaries. A new approach that has shown promising results involves adding topic awareness to a summariser to guide the model by mimicking human awareness. Therefore, this paper aims to enhance the accuracy of abstractive Arabic summarisation by introducing a novel topic-aware abstractive Arabic summarisation model (TAAM) that employs a recurrent neural network. Two experiments were conducted on TAAM: quantitative and qualitative. Based on a quantitative approach using ROUGE matrices, the TAAM model achieves 10.8% higher accuracy than other existing baseline models. Additionally, based on a qualitative approach that captures users’ perspectives, the TAAM model is capable of producing a coherent Arabic summary that is easy to read and captures the main idea of the input text.

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