img
img
img
img
img
link
Home / all-journals/ /Article

An Effective Fake News Detection on Social Media and Online News Portal by Using Machine Learning


Ragia Sultana1, Md. Khaled Hassan1, Md. Rakibul Hassan1, Saifur Rahaman Sourav1, Md Abu Huraira1, and Shamim Ahmed1*

1Dept. of Computer Science and Engineering, Bangladesh University of Business and Technology (BUBT), Rupnagar R/A, Mirpur-2, Dhaka-1216, Bangladesh. 

*Correspondence: shamim.6feb@gmail.com (Shamim Ahmed, Assistant Professor, Department of Computer Science and Engineering, Bangladesh University of Business and Technology (BUBT), Dhaka 1216, Bangladesh).

Powered by Froala Editor


ABSTRACT

In today's world, misinformation is a major problem. Fake news is a characteristic that is influencing our publication, explicitly in the political world. Because there are only a limited amount of resources (such as datasets and distributed writing) available, the emerging research field of counterfeit news is experiencing difficulties. Yet, profound learning procedures' new forward leaps in muddled regular language handling errands make them a potential response for distinguishing counterfeit news from legitimate assets. We propose in this paper a fake news recognizable proof model that utilizes man-made intelligence methods. We explored eight different machine courses of action methods. For correlation, we chose some notable grouping AI models, including Strategic Relapse (LR), Choice Tree Arrangement (DTC), Inclination Supporting Classifier (GBC), Arbitrary Backwoods Classifier (RFC), Direct SVC (SVC), Inactive Forceful Classifier (Dad), K Neighbors Classifier (KNC), and Multinomial NB (MNB). Trial assessment yields the best exhibition utilizing the Direct Help Vector Classifier (Straight SVC) as a classifier, with a precision of 96%. 

Keywords: Fake news, Classifier, Natural language, Machine learning, Detection, and Models.

Citation: Sultana R, Hassan MK, Hassan MR, Sourav SR, Huraira MA, and Ahmed S. (2022). An effective fake news detection on social media and online news portal by using machine learning. Aust. J. Eng. Innov. Technol., 4(5), 109-120. https://doi.org/10.34104/ajeit.022.0950106


Powered by Froala Editor