Tesis
Redes neurais para grafos e suas aplicações aos sistemas complexos
Fecha
2022-04-08Registro en:
Autor
Carvalho, Guilherme Michel Lima de
Institución
Resumen
Complex systems are composed of several components that interact with each other. A natural
approach for these types of systems is to use mathematical graph abstraction. In different
contexts in the real world, it is possible to use complex network techniques to model these
systems. In these systems, dynamic processes such as the spread of information and the spread
of disease can occur. In this work we consider the use of artificial neural network techniques
for graph-structured data in order to study the propagation of rumor in complex networks and
the detection of community structures. For the proposed case of rumor, a model was developed
based on graph neural networks for the porpuse of detected the source of the a rumour in graphs
with community structure and for community dectection was evaluate the potential of graph
neural networks in comparison to traditional methods of the network science.