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Dilated Long Short-Term Memory Network Augmentation for Precise Fake News Classification

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Evolutionary Artificial Intelligence (ICEASSM 2017)

Abstracts

In this digital era, the propagation of misleading information, sometimes referred to as “fake news,” has emerged as a serious challenge. This research study suggests a novel technique for recognizing false news using a dilated version of the neural network known as Long Short-Term Memory (LSTM). The LSTM network is a type of deep learning model, which is trained by using a dataset of tagged news items. This helps the network to learn its patterns. The labels indicate whether the article is genuine or fabricated, and the dataset is then trained to the proposed model. The proposed model is able to capture long-term relationships in the text because of the dilated convolution design, which is critical for properly recognizing the fake news. The experimental findings show that the proposed strategy is capable of achieving a high degree of accuracy when instances of fake news are identified.

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Acknowledgements

The author, Dr. Kanusu Srinivasa Rao, expresses sincere gratitude to the authorities of Yogi Vemana University, Kadapa, India, for granting approval for the project under the reference “No. YVU/SMRG/Dr. KSR/CST/Administrative Sanction /2022.” This approval has been pivotal in facilitating the execution of this research project.

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Correspondence to Kanusu Srinivasa Rao .

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Rao, K.S., Challa, R., Susheel Kumar, B., Reddaiah, B., Pulluru, K., Simhadri Naidu Surapu, V. (2024). Dilated Long Short-Term Memory Network Augmentation for Precise Fake News Classification. In: Asirvatham, D., Gonzalez-Longatt, F.M., Falkowski-Gilski, P., Kanthavel, R. (eds) Evolutionary Artificial Intelligence. ICEASSM 2017. Algorithms for Intelligent Systems. Springer, Singapore. https://doi.org/10.1007/978-981-99-8438-1_12

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