TY - JOUR
T1 - Lights and shadows in Evolutionary Deep Learning
T2 - Taxonomy, critical methodological analysis, cases of study, learned lessons, recommendations and challenges
AU - Martinez, Aritz D.
AU - Del Ser, Javier
AU - Villar-Rodriguez, Esther
AU - Osaba, Eneko
AU - Poyatos, Javier
AU - Tabik, Siham
AU - Molina, Daniel
AU - Herrera, Francisco
N1 - Publisher Copyright:
© 2020 Elsevier B.V.
PY - 2021/3
Y1 - 2021/3
N2 - Much has been said about the fusion of bio-inspired optimization algorithms and Deep Learning models for several purposes: from the discovery of network topologies and hyperparametric configurations with improved performance for a given task, to the optimization of the model's parameters as a replacement for gradient-based solvers. Indeed, the literature is rich in proposals showcasing the application of assorted nature-inspired approaches for these tasks. In this work we comprehensively review and critically examine contributions made so far based on three axes, each addressing a fundamental question in this research avenue: (a) optimization and taxonomy (Why?), including a historical perspective, definitions of optimization problems in Deep Learning, and a taxonomy associated with an in-depth analysis of the literature, (b) critical methodological analysis (How?), which together with two case studies, allows us to address learned lessons and recommendations for good practices following the analysis of the literature, and (c) challenges and new directions of research (What can be done, and what for?). In summary, three axes – optimization and taxonomy, critical analysis, and challenges – which outline a complete vision of a merger of two technologies drawing up an exciting future for this area of fusion research.
AB - Much has been said about the fusion of bio-inspired optimization algorithms and Deep Learning models for several purposes: from the discovery of network topologies and hyperparametric configurations with improved performance for a given task, to the optimization of the model's parameters as a replacement for gradient-based solvers. Indeed, the literature is rich in proposals showcasing the application of assorted nature-inspired approaches for these tasks. In this work we comprehensively review and critically examine contributions made so far based on three axes, each addressing a fundamental question in this research avenue: (a) optimization and taxonomy (Why?), including a historical perspective, definitions of optimization problems in Deep Learning, and a taxonomy associated with an in-depth analysis of the literature, (b) critical methodological analysis (How?), which together with two case studies, allows us to address learned lessons and recommendations for good practices following the analysis of the literature, and (c) challenges and new directions of research (What can be done, and what for?). In summary, three axes – optimization and taxonomy, critical analysis, and challenges – which outline a complete vision of a merger of two technologies drawing up an exciting future for this area of fusion research.
KW - Deep Learning
KW - Evolutionary Computation
KW - Neuroevolution
KW - Swarm Intelligence
UR - http://www.scopus.com/inward/record.url?scp=85094325767&partnerID=8YFLogxK
U2 - 10.1016/j.inffus.2020.10.014
DO - 10.1016/j.inffus.2020.10.014
M3 - Article
AN - SCOPUS:85094325767
SN - 1566-2535
VL - 67
SP - 161
EP - 194
JO - Information Fusion
JF - Information Fusion
ER -