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Machine Learning Techniques for the Analysis of Different Adversarail Mechanisms

Aruna Animish Pavate

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English
Mohd Abdul Hafi
24 February 2024
In recent years deep structured learning is practiced in many safety-critical applications. Deep learning algorithms are used in every field, such as face recognition (laptop, smartphones) and fingerprint recognition for financial applications. A deep neural network performs classification tasks. In designing any application using machine learning, enormous training data are required. Appropriate training gives the correct results. Other than training, many factors need to be considered viz labelling data: (manual task), expert advice, model selection, etc. In 2013 researchers observed that deep neural networks give expected results to the adversary by using adversarial samples during the testing or deployment phase without directly accessing the model, considering no knowledge about the model.

Adversary does use labels during the deployment phase, modify labels, and apply them to attack the victim model. Trustability of the deep neural network is a significant concern in many safety-critical applications, where input data contains noise and is not certain. Most frequently, uncertainty and noise in data are random, and adversary has incentives to change the data. As a preventive measure to detect malicious activities increases, adversaries become motivated to put extra effort into deceiving the algorithms. The security issue is then critical, especially for the applications which involve safety and monetary usage.

By:  
Imprint:   Mohd Abdul Hafi
Dimensions:   Height: 279mm,  Width: 216mm,  Spine: 10mm
Weight:   435g
ISBN:   9798224459506
Pages:   182
Publication Date:  
Audience:   General/trade ,  ELT Advanced
Format:   Paperback
Publisher's Status:   Active

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