A Novel Ant Colony Based DBN Framework to Analyze the Drug Reviews

Full Text (PDF, 795KB), PP.25-39

Views: 0 Downloads: 0

Author(s)

Nazia Tazeen 1,* K. Sandhya Rani 2

1. Department of Computer Science & Engineering, SPMVV Tirupati, India

2. Department of Computer Science, SPMVV Tirupati, India

* Corresponding author.

DOI: https://doi.org/10.5815/ijisa.2021.06.03

Received: 27 Sep. 2021 / Revised: 25 Oct. 2021 / Accepted: 3 Nov. 2021 / Published: 8 Dec. 2021

Index Terms

Ant colony optimization, opinion specification, big data, sentiment classification, deep learning, Deep Belief Neural framework

Abstract

Nowadays, big data is directing the entire advanced world with its function and applications. Moreover, to make better decisions from the ever emerging big data belonging to the respective organizations, deep learning (DL) models are required. DL is also widely used in the sentiment classification tasks considering data from social networks. Furthermore, sentiment classification signifies the best way to analyze the big data and make decisions accordingly. Analyzing the sentiments from big data applications is quite challenging task and also requires more time for the execution process. Therefore, to analyze and classify big data emerging from social networks in a better way, DL models are utilized. DL techniques are being used among the researchers to get high end results. A novel Ant Colony-based Deep Belief Neural Network (AC-DBN) framework is proposed in this research. Drug review tweets are opted to perform sentiment classification by using the proposed framework in python environment. A model fitness function is initiated in the DL framework and is observed that it is attaining high accuracy with low computation time. Additionally, the obtained results attained from the proposed framework are validated with existing methods for evaluating the efficiency of the proposed AC-DBN approach.

Cite This Paper

Nazia Tazeen, K. Sandhya Rani, "A Novel Ant Colony Based DBN Framework to Analyze the Drug Reviews", International Journal of Intelligent Systems and Applications(IJISA), Vol.13, No.6, pp.25-39, 2021. DOI: 10.5815/ijisa.2021.06.03

Reference

[1] Xu, Guixian, et al. "Sentiment analysis of comment texts based on BiLSTM." IEEE Access, 7(2019): 51522-51532.
[2] Maryame, Naji, et al. "State of the Art of Deep Learning Applications in Sentiment Analysis: Psychological Behavior Prediction." Embedded Systems and Artificial Intelligence. Springer, Singapore, 2020. 441-451.
[3] Do, Hai Ha, et al. "Deep learning for aspect-based sentiment analysis: a comparative review." Expert Systems with Applications 118 (2019): 272-299.
[4] Zvarevashe, Kudakwashe, and Oludayo O. Olugbara. "A framework for sentiment analysis with opinion mining of hotel reviews." 2018 Conference on information communications technology and society (ICTAS). IEEE, 2018.
[5] Aggarwal, Charu C. "Opinion mining and sentiment analysis." Machine learning for text. Springer, Cham, 2018. 413-434.
[6] Rathan, M., et al. "Consumer insight mining: aspect based Twitter opinion mining of mobile phone reviews." Applied Soft Computing 68 (2018): 765-773.
[7] Bose, Rajesh, et al. "Analyzing political sentiment using Twitter data." Information and communication technology for intelligent systems. Springer, Singapore, 2019. 427-436.
[8] Kauffmann, E., Peral, J., Gil, D., Ferrández, A., Sellers, R., & Mora, H. (2020). A framework for big data analytics in
commercial social networks: A case study on sentiment analysis and fake review detection for marketing decision-making. Industrial Marketing Management, 90, 523-537.
[9] Benlahbib, Abdessamad. "Aggregating customer review attributes for online reputation generation." IEEE Access (2020).
[10] Singh, Nikhil Kumar, Deepak Singh Tomar, and Arun Kumar Sangaiah. "Sentiment analysis: a review and comparative analysis over social media." Journal of Ambient Intelligence and Humanized Computing 11.1 (2020): 97-117.
[11] Ahmad, Shakeel, et al. "Detection and classification of social media-based extremist affiliations using sentiment analysis techniques." Human-centric Computing and Information Sciences 9.1 (2019): 1-23.
[12] Ramírez-Tinoco, Francisco Javier, et al. "Use of sentiment analysis techniques in healthcare domain." Current Trends in Semantic Web Technologies: Theory and Practice. Springer, Cham, 2019. 189-212.
[13] Drus, Zulfadzli, and Haliyana Khalid. "Sentiment analysis in social media and its application: Systematic literature review." Procedia Computer Science 161 (2019): 707-714.
[14] Vashishtha, Srishti, and Seba Susan. "Fuzzy Interpretation of Word Polarity Scores for Unsupervised Sentiment Analysis." 2020 11th International Conference on Computing, Communication and Networking Technologies (ICCCNT). IEEE, 2020.
[15] Mishra M, Barman SK, Maity D, Maiti DK (2019) Ant lion optimisation algorithm for structural damage detection using vibration data. Journal of Civil Structural Health Monitoring 9(1):117-136. https://doi.org/10.1007/s13349-018-0318-z.
[16] Mukku SS, Oota SR, Mamidi R (2017) Tag me a label with multi-arm: Active learning for telugu sentiment analysis. International Conference on Big Data Analytics and Knowledge Discovery, Springer, Cham, pp 355–367. https://doi.org/10.1007/978-3-319-64283-3_26.
[17] Nakagawa T, Inui K, Kurohashi S (2010) Dependency tree-based opinion specification using CRFs with hidden variables. Human Language Technologies: The 2010 Annual Conference of the North American Chapter of the Association for Computational Linguistics,pp 786–794.
[18] Dadvar M, Hauff C, Jong F (2011) Scope of negation detection in sentiment analysis, Proceedings of the Dutch-Belgian Information Retrieval Workshop (DIR 2011), University of Amsterdam, pp 16–20.
[19] Edgcomb JB, Zima B (2019) Machine Learning, Natural Language Processing, and the Electronic Health Record: Innovations in Mental Health Services Research. Psychiatric Services 70:346–349. https://doi.org/10.1176/appi.ps.201800401.
[20] Garg, Satvik. "Drug Recommendation System based on Sentiment Analysis of Drug Reviews using Machine Learning." 2021 11th International Conference on Cloud Computing, Data Science & Engineering (Confluence). IEEE, 2021.
[21] Han, Yue, Meiling Liu, and Weipeng Jing. "Aspect-level drug reviews sentiment analysis based on double BiGRU and knowledge transfer." IEEE Access 8 (2020): 21314-21325.
[22] Bhamare, Bhavana R., and JeyanthiPrabhu. "A supervised scheme for aspect extraction in sentiment analysis using the hybrid feature set of word dependency relations and lemmas." PeerJ Computer Science 7 (2021): e347.
[23] Basiri, Mohammad Ehsan, et al. "A novel method for sentiment classification of drug reviews using fusion of deep and machine learning techniques." Knowledge-Based Systems 198 (2020): 105949.
[24] Colón-Ruiz, Cristóbal, and Isabel Segura-Bedmar. "Comparing deep learning architectures for sentiment analysis on drug reviews." Journal of Biomedical Informatics 110 (2020): 103539.
[25] Hossain, MdDeloar, et al. "Drugs Rating Generation and Recommendation from Sentiment Analysis of Drug Reviews using Machine Learning." 2020 Emerging Technology in Computing, Communication and Electronics (ETCCE). IEEE, 2020.
[26] Nagamanjula, R., and A. Pethalakshmi. "A novel framework based on bi-objective optimization and LAN 2 FIS for Twitter sentiment analysis." Social Network Analysis and Mining 10 (2020): 1-16.
[27] NaziaTazeen and K. Sandhya Rani, “A Conceptual Data Modelling Framework for Context-Aware Text Classification” International Journal of Advanced Computer Science and Applications (IJACSA),11(11),2020. http://dx.doi.org/10.14569/IJACSA.2020.0111116
[28] Yadav, Ashima, and Dinesh Kumar Vishwakarma. "A Weighted Text Representation framework for Sentiment Analysis of Medical Drug Reviews." 2020 IEEE Sixth International Conference on Multimedia Big Data (BigMM). IEEE, 2020.
[29] Paniri, Mohsen, Mohammad BagherDowlatshahi, and HosseinNezamabadi-pour. "MLACO: A multi-label feature selection algorithm based on ant colony optimization." Knowledge-Based Systems 192 (2020): 105285.
[30] Su, Chuan-Jun, and Yi Li. "Sentiment analysis and information diffusion on social media: the case of the Zika virus." BIBE 2018; International Conference on Biological Information and Biomedical Engineering. VDE, 2018.
[31] Shayaa, Shahid, et al. "Sentiment analysis of big data: Methods, applications, and open challenges." IEEE Access 6 (2018): 37807-37827.
[32] https://www.kaggle.com/jessicali9530/kuc-hackathon-winter-2018
[33] Novendri, Risky, et al. "Sentiment analysis of YouTube movie trailer comments using naïve bayes." Bulletin of Computer Science and Electrical Engineering 1.1 (2020): 26-32.
[34] Joann Galopo Perez, Eugene S. Perez, "Predicting Student Program Completion Using Naïve Bayes Classification Algorithm", International Journal of Modern Education and Computer Science, Vol.13, No.3, pp. 57-67, 2021.
[35] Dimple Tiwari, Nanhay Singh, "Ensemble Approach for Twitter Sentiment Analysis", International Journal of Information Technology and Computer Science, Vol.11, No.8, pp.20-26, 2019.
[36] Yasin Görmez, Yunus E. Işık, Mustafa Temiz, Zafer Aydın, "FBSEM: A Novel Feature-Based Stacked Ensemble Method for Sentiment Analysis’ Comments in E-Government", International Journal of Information Technology and Computer Science, Vol.12, No.6, pp.11-22, 2020.