2022
DOI: 10.29350/qjps.2022.27.1.1452
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A Comparative Study Of Combining Deep Learning And Homomorphic Encryption Techniques

Abstract: Deep learning simulation necessitates a considerable amount of internal computational resources and fast training for large amounts of data. The cloud has been delivering software to help with this transition in recent years, posing additional security risks to data breaches. Modern encryption schemes maintain personal secrecy and are the best method for protecting data stored on a server and data sent from an unauthorized third party. However, when data must be stored or analyzed, decryption is needed, and ho… Show more

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“…Deep learning extracts intricate features from dimensional data, creating models connecting inputs to outputs using multilayered networks and layered neural networks for abstract computation [28]. DL techniques improve accuracy and reduce training time in complex problems, enabling breakthroughs in science, engineering, and engineering tasks like data analysis, pattern recognition, and prediction [29].…”
Section: Deep Learning (Dl)mentioning
confidence: 99%
“…Deep learning extracts intricate features from dimensional data, creating models connecting inputs to outputs using multilayered networks and layered neural networks for abstract computation [28]. DL techniques improve accuracy and reduce training time in complex problems, enabling breakthroughs in science, engineering, and engineering tasks like data analysis, pattern recognition, and prediction [29].…”
Section: Deep Learning (Dl)mentioning
confidence: 99%