Deep Neural Evolution Deep Neural Evolution

Deep Neural Evolution

Deep Learning with Evolutionary Computation

    • 169,99 $
    • 169,99 $

От издателя

This book delivers the state of the art in deep learning (DL) methods hybridized with evolutionary computation (EC). Over the last decade, DL has dramatically reformed many domains: computer vision, speech recognition, healthcare, and automatic game playing, to mention only a few. All DL models, using different architectures and algorithms, utilize multiple processing layers for extracting a hierarchy of abstractions of data. Their remarkable successes notwithstanding, these powerful models are facing many challenges, and this book presents the collaborative efforts by researchers in EC to solve some of the problems in DL.


EC comprises optimization techniques that are useful when problems are complex or poorly understood, or insufficient information about the problem domain is available. This family of algorithms has proven effective in solving problems with challenging characteristics such as non-convexity, non-linearity, noise, and irregularity, which dampen the performance of most classic optimization schemes. Furthermore, EC has been extensively and successfully applied in artificial neural network (ANN) research —from parameter estimation to structure optimization. Consequently, EC researchers are enthusiastic about applying their arsenal for the design and optimization of deep neural networks (DNN).

This book brings together the recent progress in DL research where the focus is particularly on three sub-domains that integrate EC with DL: (1) EC for hyper-parameter optimization in DNN; (2) EC for DNN architecture design; and (3) Deep neuroevolution. The book also presents interesting applications of DL with EC in real-world problems, e.g., malware classification and object detection. Additionally, it covers recent applications of EC in DL, e.g. generative adversarial networks (GAN) training and adversarial attacks. The book aims to prompt and facilitate the research in DL with EC both in theory and in practice.

ЖАНР
Наука и природа
РЕЛИЗ
2020
20 мая
ЯЗЫК
EN
английский
ОБЪЕМ
450
стр.
ИЗДАТЕЛЬ
Springer Nature Singapore
ПРОДАВЕЦ
Springer Nature B.V.
РАЗМЕР
56,3
МБ
Automated Machine Learning and Meta-Learning for Multimedia Automated Machine Learning and Meta-Learning for Multimedia
2022
Artificial Intelligence Applications and Innovations Artificial Intelligence Applications and Innovations
2022
Enhancing Deep Learning Performance Using Displaced Rectifier Linear Unit Enhancing Deep Learning Performance Using Displaced Rectifier Linear Unit
2022
Deep Learning and Practice with MindSpore Deep Learning and Practice with MindSpore
2021
Genetic Programming Theory and Practice X Genetic Programming Theory and Practice X
2013
Self-Adaptive Systems for Machine Intelligence Self-Adaptive Systems for Machine Intelligence
2011
AI and SWARM AI and SWARM
2019
Deep Swarm and Evolution for Generative Artificial Intelligence Deep Swarm and Evolution for Generative Artificial Intelligence
2025
Agent-Based Modeling and Simulation with Swarm Agent-Based Modeling and Simulation with Swarm
2013
Swarm Intelligence and Deep Evolution Swarm Intelligence and Deep Evolution
2022
Evolutionary Approach to Machine Learning and Deep Neural Networks Evolutionary Approach to Machine Learning and Deep Neural Networks
2018
Evolutionary Computation in Gene Regulatory Network Research Evolutionary Computation in Gene Regulatory Network Research
2016