Volume 25 , Issue 2 , PP: 44-56, 2025 | Cite this article as | XML | Html | PDF | Full Length Article
Abdalla Ibrahim Abdalla Musa 1 * , Mohammed Abdullah Al-Hagery 2
Doi: https://doi.org/10.54216/IJNS.250205
Sentiment Analysis (SA) is a crucial task for analyzing online content over languages for processes such as content moderation and opinion mining. However advanced NLP modeling approaches frequently need an abundance of training datasets to accomplish their outcomes. SA is a classification task where the polarity of text dataset is detected, viz., to analyze a document or sentence expressing a positive, negative, or neutral sentiment. Deep learning (DL) becomes predominant in resolving Natural Language Processing (NLP) tasks. On the other hand, this technique requires a significantly enormous quantity of annotated corpus, which is not easier to attain, particularly under these lower resource settings. Neutrosophic Net-RBF Neural Network (NNRBFNN) combines the principle of neutrosophic logic (NL) with RBF-NNs for handling data indeterminacy and uncertainty. This combined strategy optimizes conventional NNs by incorporating the possibility of addressing incomplete and imprecise data, augmenting decision-making in challenging circumstances. This paper introduces a Neutrosophic Net-RBF Neural Network with Sentiment Analysis on a Low Resource Language (NNRBFNN-SALRL) model. To accomplish this, the NNRBFNN-SALRL method undertakes data pre-processing to transform the input dataset into a helpful format, and Term Frequency Inverse Document Frequency (TF-IDF) technique is utilized for the process of word embedding. For the classification method, the NNRBFNN model is used. To optimize the recognition outcomes of the NNRBFNN method, the hyperparameter tuning technique can be done using the Bayesian Optimization Algorithm (BOA). Wide-ranging experiments were conducted to validate the superior outcomes of the NNRBFNN-SALRL method. The empirical findings indicated that the NNRBFNN-SALRL method emphasized betterment over other approaches.
Bayesian Optimization Algorithm, Neutrosophic Net, Neural Network, Sentiment Analysis, Logistic Regression , Fuzzy Sets
[1] Abobala, M., "AH-Subspaces in Neutrosophic Vector Spaces", International Journal of Neutrosophic Science, Vol. 6 , pp. 80-86, 2020.
[2] Abobala, M., "A Study of AH-Substructures in n-Refined Neutrosophic Vector Spaces", International Journal of Neutrosophic Science", Vol. 9, pp.74-85, 2020.
[3] Khalid, M., Khalid, N.A. and Iqbal, R., 2020. MBJ-neutrosophic T-ideal on B-algebra. International Journal of Neutrosophic Science, 1(1), pp.29-39.
[4] Gamboa-Cruzado, J., Morante-Palomino, E., Rivero, C.A., Bendezú, M.L. and Fernández, D.M.M., 2024. Research on the Classification and Application of Physical Education Teaching Mode by Neutrosophic Analytic Hierarchy Process. International Journal of Neutrosophic Science, 23(3), pp.51-1.
[5] Saheb, A.H. and Buti, R.H., 2024. A Specific Category of Harmonic Functions Characterized By A Generalized Komatu Operator in Conjunction With The (RK) Integral Operator and Applications to Neutrosophic Complex Field. Full Length Article, 23(3), pp.44-4.
[6] Alsayat, A.; Elmitwally, N. A comprehensive study for Arabic Sentiment Analysis (challengesand applications). Egypt. Inform. J. 2020, 21, 7–12.
[7] Al-Bayati, A.Q.; Al-Araji, A.S.; Ameen, S.H. Arabic Sentiment Analysis (ASA) using deep learning approach. J. Eng. 2020, 26, 85–93.
[8] Ombabi, A.H.; Ouarda, W.; Alimi, A.M. Deep learning CNN–LSTM framework for Arabic Sentiment Analysis using textual information shared in social networks. Soc. Netw. Anal. Min. 2020, 10, 53.
[9] Omara, E.; Mosa, M.; Ismail, N. Deep convolutional network for Arabic Sentiment Analysis. In Proceedings of the 2018 International Japan-Africa Conference on Electronics, Communications and Computations (JAC-ECC), Alexandria, Egypt, 17–19 December 2018; IEEE: Piscataway, NJ, USA, 2018; pp. 155–159.
[10] Dashtipour, K.; Gogate, M.; Adeel, A.; Larijani, H.; Hussain, A. Sentiment analysis of persian movie reviews using deep learning. Entropy 2021, 23, 596.
[11] Ali, A., Khan, M., Khan, K., Khan, R.U. and Aloraini, A., 2024. Sentiment Analysis of Low-Resource Language Literature Using Data Processing and Deep Learning. Computers, Materials & Continua, 79(1).
[12] Saleh, H., Mostafa, S., Alharbi, A., El-Sappagh, S. and Alkhalifah, T., 2022. Heterogeneous ensemble deep learning model for enhanced Arabic sentiment analysis. Sensors, 22(10), p.3707.
[13] Albahli, S. and Nawaz, M., 2023. TSM-CV: Twitter Sentiment Analysis for COVID-19 Vaccines Using Deep Learning. Electronics, 12(15), p.3372.
[14] Albahli, S., Irtaza, A., Nazir, T., Mehmood, A., Alkhalifah, A. and Albattah, W., 2022. A machine learning method for prediction of stock market using real-time twitter data. Electronics, 11(20), p.3414.
[15] Alajlan, N.N. and Ibrahim, D.M., 2022. TinyML: Enabling of inference deep learning models on ultra-low-power IoT edge devices for AI applications. Micromachines, 13(6), p.851.
[16] Bansal, S., Gowda, K. and Kumar, N., 2024. Multilingual personalized hashtag recommendation for low-resource Indic languages using graph-based deep neural network. Expert Systems with Applications, 236, p.121188.
[17] Rasool, H.A., Abedi, F., Ismaeel, A.G., Abbas, A.H., Khalid, R., Alkhayyat, A., Jaber, M.M. and Garg, A., 2023. Pelican Optimization Algorithm with Deep Learning for Aspect based Sentiment Analysis on Asian Low Resource Languages. ACM Transactions on Asian and Low-Resource Language Information Processing.
[18] Qiao, R. and Huang, X., 2024. Application of Deep Learning in Cross-Lingual Sentiment Analysis for Natural Language Processing. Journal of Artificial Intelligence Practice, 7(1), pp.1-6.
[19] Gupta, I.K., Rana, K.A.A., Gaur, V., Sagar, K., Sharma, D.P. and Alkhayyat, A., 2023. Low-resource language information processing using dwarf mongoose optimization with deep learning based sentiment classification. ACM Transactions on Asian and Low-Resource Language Information Processing.
[20] Zhao, C., Wu, M., Yang, X., Sun, X., Wang, S. and Li, D., 2024. Cross-Domain Aspect-Based Sentiment Classification with a Pre-Training and Fine-Tuning Strategy for Low-Resource Domains. ACM Transactions on Asian and Low-Resource Language Information Processing, 23(4), pp.1-22.
[21] Aivatoglou, G., Fytili, A., Arampatzis, G., Zaikis, D., Stylianou, N. and Vlahavas, I., 2023, September. End-to-End Aspect Extraction and Aspect-Based Sentiment Analysis Framework for Low-Resource Languages. In Intelligent Systems Conference (pp. 841-858). Cham: Springer Nature Switzerland.
[22] Elhassan, N., Varone, G., Ahmed, R., Gogate, M., Dashtipour, K., Almoamari, H., El-Affendi, M.A., Al-Tamimi, B.N., Albalwy, F. and Hussain, A., 2023. Arabic sentiment analysis based on word embeddings and deep learning. Computers, 12(6), p.126.
[23] Liu, H., Chen, X. and Liu, X., 2022. A study of the application of weight distributing method combining sentiment dictionary and TF-IDF for text sentiment analysis. IEEE Access, 10, pp.32280-32289.
[24] Hasanin, Tawfiq. Harnessing Dimensionality Reduction with Neutrosophic Net-RBF Neural Networks for Financial Distress Prediction. Journal of International Journal of Neutrosophic Science, vol. 24, no. 4, 2024, pp. 39-49.
[25] Kani, G.T. and Ghahremani, A., 2024. Optimal design of heat pipes for city gate station heaters by applying genetic and Bayesian optimization algorithms to an artificial neural network model. Case Studies in Thermal Engineering, p.104203.
[26] Nabil, M.; Aly, M.; Atiya, A. Astd: Arabic sentiment tweets dataset. In Proceedings of the 2015 Conference on Empirical Methods in Natural Language Processing, Lisbon, Portugal, 17–21 September 2015; pp. 2515–2519.