Deep neural evolution : deep learning with evolutionary computation
Author(s)
Bibliographic Information
Deep neural evolution : deep learning with evolutionary computation
(Natural computing series)
Springer, c2020
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Note
Includes bibliographical references and index
Description and Table of Contents
Description
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.
Table of Contents
Part I Preliminaries
Chapter 1 Evolutionary Computation and meta-heuristics
Chapter 2 A Shallow Introduction to Deep Neural Networks
Part II Hyper-parameter Optimization
Chapter 3 On the Assessment of Nature-Inspired Meta-Heuristic Optimization Techniques to Fine-Tune Deep Belief Networks
Chapter 4 Automated development of DNN based spoken language systems using evolutionary algorithms
Chapter 5 Search heuristics for the optimization of DBN for Time Series Forecasting
Part III Structure Optimization
Chapter 6 Particle Swarm Optimisation for Evolving Deep Convolutional Neural Networks for Image Classification: Single- and Multi-objective Approaches
Chapter 7 Designing Convolutional Neural Network Architectures Using Cartesian Genetic Programming
Chapter 8 Fast Evolution of CNN Architecture for Image Classificaiton
Part IV Deep Neuroevolution
Chapter 9 Discovering Gated Recurrent Neural Network Architectures
Chapter 10 Investigating Deep Recurrent Connections and Recurrent Memory Cells Using Neuro-Evolution
Chapter 11 Neuroevolution of Generative Adversarial Networks
Part V Applications and Others
Chapter 12 Evolving deep neural networks for X-ray based detection of dangerous objects
Chapter 13 Evolving the architecture and hyperparameters of DNNs for malware detection
Chapter 14 Data Dieting in GAN Training
Chapter 15 One-Pixel Attack: Understanding and Improving Deep Neural Networks with Evolutionary Computation
by "Nielsen BookData"