Design of Ensemble Neural Networks with Type-3 Fuzzy Aggregation using Particle Swarm Optimization and Genetic Algorithms for Ethereum Prediction
DOI:
https://doi.org/10.13053/cys-29-3-5910Keywords:
Ethereum time series, type-3 fuzzy system, time series ensemble neural networks, mamdani model, sugeno modelAbstract
In this study, an ensemble neural network (ENN) for Ethereum time series prediction was optimized using particle swarm optimization and genetic algorithms. Additionally, Type-1, Type-2, and Type-3 fuzzy inference systems, of both Mamdani and Sugeno types, were designed for achieving the prediction. The integration performed with these fuzzy systems is achieved by utilizing the results from optimizing the ENN with each optimization algorithm. In this case, the Ethereum data is the series being used for testing the proposal. This approach aims to minimize prediction error by combining the responses of the ENN with Type-1, Type-2, and Type-3 fuzzy systems, each consisting of five inputs and consequently 32 fuzzy rules are utilized. The results show that the Type-1, Type-2, and Type-3 fuzzy system approach yields an accurate prediction of the Ethereum series, as further validated by statistical tests on the results of the fuzzy systems.Downloads
Published
2025-09-26
Issue
Section
Articles
License
Hereby I transfer exclusively to the Journal "Computación y Sistemas", published by the Computing Research Center (CIC-IPN),the Copyright of the aforementioned paper. I also accept that these
rights will not be transferred to any other publication, in any other format, language or other existing means of developing.I certify that the paper has not been previously disclosed or simultaneously submitted to any other publication, and that it does not contain material whose publication would violate the Copyright or other proprietary rights of any person, company or institution. I certify that I have the permission from the institution or company where I work or study to publish this work.The representative author accepts the responsibility for the publicationof this paper on behalf of each and every one of the authors.
This transfer is subject to the following conditions:- The authors retain all ownership rights (such as patent rights) of this work, except for the publishing rights transferred to the CIC, through this document.
- Authors retain the right to publish the work in whole or in part in any book they are the authors or publishers. They can also make use of this work in conferences, courses, personal web pages, and so on.
- Authors may include working as part of his thesis, for non-profit distribution only.