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Assessment and recommendation of neural networks and precise techniques for sentiment systems analysis

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Abstract

Sentiment analysis (SA) is a critical research issue in the realm of emotion. Artificial intelligence (AI) recognizes the polarity of an opinion, sentiments, and the amount of sadness communicated within user's social media positions, with subjectivity of documents or digital texts. This work presents a thorough assessment and review of current approaches and algorithms for semantic analysis. The critical contribution of this work is that it gives the most up-to-date picture of research work done in SA and recent trends in the field. It presents a profound classification of these techniques. It also focuses on challenges and emerging research areas in SA. The researchers have identified various types of emotions from user's inputs. For classifying the user feelings, they have effectively employed advanced and updated deep learning classifiers/models such as long-short-term-memory (LSTM), recurrent neural network (RNN), and convolutional neural network (CNN), capsule network (CapsNet) in their works. The glove2 pre-trained normalized phrase indices is primarily used in distinguishing emotion types. Various authors have used hyper parameter tuning to avoid overfitting and readying a better model for SA.

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Acknowledgements

The authors would like to thank the Deanship of Scientific Research at Umm Al-Qura University for supporting this work by Grant Code: (23UQU4340560DSR01).

Funding

This work is funded by the Deanship of Scientific Research at Umm Al-Qura University for supporting this work by Grant Code: (23UQU4340560DSR01).

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Correspondence to Md. Amzad Hossain or Ahmed Nabih Zaki Rashed.

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Pande, S.D., Altahan, B.R., Ahammad, S.H. et al. Assessment and recommendation of neural networks and precise techniques for sentiment systems analysis. J Ambient Intell Human Comput 14, 11285–11299 (2023). https://doi.org/10.1007/s12652-023-04643-4

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