Binmahfoudh, 2023 - Google Patents
Improved deep learning sentiment analysis for ArabicBinmahfoudh, 2023
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- 3620199222139448313
- Author
- Binmahfoudh A
- Publication year
- Publication venue
- J Theor Appl Inform Technol
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Sentiment Analysis (SA) has recently gained great interest in Natural Language Processing (NLP). In fact, NLP consists in extracting data from texts and categorizing certain tweets as Positive, Negative, or Neutral. In this paper, we also present our participation in the Arabic …
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