Convolutional Deep Belief Network Based Short Text Classification on Arabic Corpus

Abdelwahed Motwakel, Badriyya B. Al-Onazi, Jaber S. Alzahrani, Radwa Marzouk, Amira Sayed A. Aziz, ABU SARWAR ZAMANI, ISHFAQ YASEEN YASEEN, Amgad Atta Abdelmageed

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

With a population of 440 million, Arabic language users form the rapidly growing language group on the web in terms of the number of Internet users. 11 million monthly Twitter users were active and posted nearly 27.4 million tweets every day. In order to develop a classification system for the Arabic language there comes a need of understanding the syntactic framework of the words thereby manipulating and representing the words for making their classification effective. In this view, this article introduces a Dolphin Swarm Optimization with Convolutional Deep Belief Network for Short Text Classification (DSOCDBN-STC) model on Arabic Corpus. The presented DSOCDBN-STC model majorly aims to classify Arabic short text in social media. The presented DSOCDBN-STC model encompasses preprocessing and word2vec word embedding at the preliminary stage. Besides, the DSOCDBN-STC model involves CDBN based classification model for Arabic short text. At last, the DSO technique can be exploited for optimal modification of the hyperparameters related to the CDBN method. To establish the enhanced performance of the DSOCDBN-STC model, a wide range of simulations have been performed. The simulation results confirmed the supremacy of the DSOCDBN-STC model over existing models with improved accuracy of 99.26%.

Original languageEnglish
Pages (from-to)3097-3113
Number of pages17
JournalComputer Systems Science and Engineering
Volume45
Issue number3
DOIs
StatePublished - 2023

Keywords

  • Arabic text
  • deep learning
  • dolphin swarm optimization
  • short text classification

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