Use of Supervised Machine Learning Classifiers for Online Fake Review Detection

Authors

  • Maysara Mazin Badr Alsaad PhD Research Scholar, Department of Computer Science, Rollwala Computer Centre, Gujarat
  • Prof. Dr. Hiren Joshi Professor, Department of Computer Science, Rollwala Computer Centre, Gujarat University

Keywords:

Fake Reviews, Spam Detection Machine Learning, ML Classification, Naïve Bayes, SVM

Abstract

Social media and e-commerce sites have prompted online communities to use reviews to provide input on goods, products, and services, as well as to support people to analyze customer input for buying choices, and corporations to improve manufacturing quality. Internet shoppers support or degrade the reputation of competitive brands. However, the dissemination of fake reviews fools people, making these reviews a worrying problem. This study proposes a guided learning online textual content fraudulent review detecting method. The work splits bogus data using machine learning classifiers and honest reviews. Experimental findings are compared to assessment measures. Planned system performance is compared to the baseline. The research comes to the conclusion that supervised machine learning techniques may be useful in identifying fraudulent reviews, but how well these techniques work is largely reliant on the characteristics that are chosen. In terms of accuracy, AUC, and other performance metrics, the SVM classifier with N-Gram feature extraction and CV feature selection performs better than other classifiers and feature selection techniques. This is shown by the examination of various feature extraction and selection techniques. According to the research, N-Gram feature extraction and CV feature selection may be helpful in spotting fraudulent reviews on e-commerce platforms. This would assist customers in making wise selections and increase the reliability of online reviews.

References

Aljabri, M., Zagrouba, R., Shaahid, A., Alnasser, F., Saleh, A., & Alomari, D. M. (2023). Machine learning-based social media bot detection: a comprehensive literature review. Social Network Analysis and Mining, 13(1). https://doi.org/10.1007/s13278-022-01020-5

Bali, A. P. S., Fernandes, M., Choubey, S., & Goel, M. (2019). Comparative performance of machine learning algorithms for fake news detection. In Communications in computer and information science (pp. 420–430). https://doi.org/10.1007/978-981-13-9942-8_40

Balim, C., & Özkan, K. (2023). Creating an AI fashioner through deep learning and computer vision. Evolving Systems. https://doi.org/10.1007/s12530-023-09498-w

Bhattacharya, A., Ghosal, A., Obaid, A. J., Krit, S., Shukla, V. K., Mandal, K., & Pramanik, S. (2021). Unsupervised Summarization Approach With Computational Statistics of Microblog Data. Advances in Systems Analysis, Software Engineering, and High Performance Computing Book Series, 23–37. https://doi.org/10.4018/978-1-7998-7701-1.ch002

Butt, U. A., Amin, R., Aldabbas, H., Mohan, S., Alouffi, B., & Ahmadian, A. (2022). Cloud-based email phishing attack using machine and deep learning algorithm. Complex & Intelligent Systems, 9(3), 3043–3070. https://doi.org/10.1007/s40747-022-00760-3

Chandan, R. R., Soni, S., Raj, A. N. J., Veeraiah, V., Dhabliya, D., Pramanik, S., & Gupta, A. (2022). Genetic algorithm and machine learning. In Advances in healthcare information systems and administration book series (pp. 167–182). https://doi.org/10.4018/978-1-6684-5656-9.ch009

Chellam, V. V., Veeraiah, V., Khanna, A., Sheikh, T., Pramanik, S., & Dhabliya, D. (2023). A Machine Vision-Based Approach for Tuberculosis identification in chest X-Rays images of patients. In Lecture notes in networks and systems (pp. 23–32). https://doi.org/10.1007/978-981-99-3315-0_3

Duma, R. A., Niu, Z., Nyamawe, A. S., Tchaye-Kondi, J., & Yusuf, A. A. (2023). A Deep Hybrid Model for fake review detection by jointly leveraging review text, overall ratings, and aspect ratings. Soft Computing, 27(10), 6281–6296. https://doi.org/10.1007/s00500-023-07897-4

Dushyant, k., Muskan, G., Gupta, A., Pramanik, S., "Utilizing Machine Learning and Deep Learning in Cybesecurity: An Innovative Approach," in Cyber Security and Digital Forensics: Challenges and Future Trends , Wiley, 2022, pp.271-293. https://doi:10.1002/9781119795667.ch1

Eshtehardian, S. A., & Khodaygan, S. (2022). A continuous RRT*-based path planning method for non-holonomic mobile robots using B-spline curves. Journal of Ambient Intelligence and Humanized Computing. https://doi.org/10.1007/s12

Published

13-03-2024

How to Cite

Maysara Mazin Badr Alsaad, & Prof. Dr. Hiren Joshi. (2024). Use of Supervised Machine Learning Classifiers for Online Fake Review Detection. Journal of Applied Optics, 49–70. Retrieved from https://appliedopticsjournal.net/index.php/JAO/article/view/86

Issue

Section

Conference Paper

Similar Articles

<< < 2 3 4 5 > >> 

You may also start an advanced similarity search for this article.