학술논문

System Neural Network: Evolution and Change Based Structure Learning
Document Type
Periodical
Source
IEEE Transactions on Artificial Intelligence IEEE Trans. Artif. Intell. Artificial Intelligence, IEEE Transactions on. 3(3):426-435 Jun, 2022
Subject
Computing and Processing
Biological neural networks
Artificial neural networks
Tensors
Software
Neurons
Learning (artificial intelligence)
Training
Artificial neural networks (ANNs)
graph theory
machine learning
systems engineering and theory
Language
ISSN
2691-4581
Abstract
System evolution analytics with artificial neural networks is a challenging and path-breaking direction, which could ease intelligent processes for systems that evolve over time. In this article, we contribute an approach to do Evolution and Change Learning (ECL), which uses an evolution representor and forms a System Neural Network (SysNN). We proposed an algorithm System Structure Learning , which is divided in two steps. First step uses the evolution representor as an Evolving Design Structure Matrix (EDSM) for intelligent design learning. Second step uses a Deep Evolution Learner that learns from evolution and changes patterns of an EDSM to generate Deep SysNN. The result demonstrates application of the proposed approach to analyze four real-world system domains: software, natural-language, retail market, and movie genre. We achieved significant learning over highly imbalanced datasets. The learning from previous states formed SysNN as a feed-forward neural network, and then memorized information as an output matrix to recommend entity-connections.