The simplicity of contact and the significant improvement in records that are easily accessible through the use of web-based broadcasting methods have made it complicated to distinguish between bogus and genuine information. The unchecked distribution of documents by allocation has resulted in the significant growth of misrepresentation. Wherever the dissemination of deceptive material is frequent, the validity of internet broadcasting websites is also being questioned. As a result, it has become an exploratory task to naturally check the data in terms of its source, substance, and supplier to sort it as false or true. Despite some limits, artificial intelligence has assumed many common record groupings. This article examines a variety of deep learning approaches for cutting-edge forms of deception and dissemination. The constraint, techniques, and impromptu inventions that may be achieved by deep learning are also studied.
CITATION STYLE
Kirn, H., Anwar, M., Sadiq, A., Zeeshan, H. M., Mehmood, I., & Butt, R. A. (2022). Deepfake Tweets Detection Using Deep Learning Algorithms †. Engineering Proceedings, 20(1). https://doi.org/10.3390/engproc2022020002
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