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Algorithms for Verifying Deep Neural Networks: Foundations and Trends® in Optimization

Autor Changliu Liu, Tomer Arnon, Chris Lazarus
en Limba Engleză Paperback – 9 feb 2021
Neural networks have been widely used in many applications, such as image classification and understanding, language processing, and control of autonomous systems. These networks work by mapping inputs to outputs through a sequence of layers. At each layer, the input to that layer undergoes an affine transformation followed by a simple nonlinear transformation before being passed to the next layer.
Neural networks are being used for increasingly important tasks, and in some cases, incorrect outputs can lead to costly consequences, hence validation of correctness at each layer is vital. The sheer size of the networks makes this not feasible using traditional methods.
In this monograph, the authors survey a class of methods that are capable of formally verifying properties of deep neural networks. In doing so, they introduce a unified mathematical framework for verifying neural networks, classify existing methods under this framework, provide pedagogical implementations of existing methods, and compare those methods on a set of benchmark problems.
Algorithms for Verifying Deep Neural Networks serves as a tutorial for students and professionals interested in this emerging field as well as a benchmark to facilitate the design of new verification algorithms.
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Specificații

ISBN-13: 9781680837865
ISBN-10: 1680837869
Pagini: 178
Dimensiuni: 156 x 234 x 10 mm
Greutate: 0.26 kg
Editura: Now Publishers Inc
Seria Foundations and Trends® in Optimization


Descriere

Explores a class of methods that are capable of formally verifying properties of deep neural networks. The book introduces a unified mathematical framework for verifying neural networks, classify existing methods under this framework, provide pedagogical implementations of existing methods, and compare those methods on a set of benchmark problems.