Using Fuzzy Inference Systems for the Creation of Forex Market Predictive Models
Metadatos
Afficher la notice complèteAuteur
Hernandez Aguila, Amaury; García-Valdez, Mario; Merelo Guervos, Juan Julián; Castañón Puga, Manuel; Castillo López, OscarEditorial
Institute of Electrical and Electronics Engineers (IEEE)
Materia
Economic forecasting Fuzzy systems Multi-agent system
Date
2021-05-14Referencia bibliográfica
A. Hernandez-Aguila, M. García-Valdez, J. -J. Merelo-Guervós, M. Castañón-Puga and O. C. López, "Using Fuzzy Inference Systems for the Creation of Forex Market Predictive Models," in IEEE Access, vol. 9, pp. 69391-69404, 2021, doi: 10.1109/ACCESS.2021.3077910
Patrocinador
Project DeepBio under Grant TIN2017-85727-C4-2-PRésumé
This paper presents a method for creating Forex market predictive models using multi-agent
and fuzzy systems, which have the objective of simulating the interactions that provoke changes in the price.
Agents in the system represent traders performing buy and sell orders in a market, and fuzzy systems are
used to model the rules followed by traders performing trades in a live market and intuitionistic fuzzy logic
to model their decisions' indeterminacy. We use functions to restrict the agents' decisions, which make
the agents become specialized at particular market conditions. These ``specialization'' functions use the
grades of membership obtained from an agent's fuzzy system and thresholds obtained from training data sets,
to determine if that agent is specialized enough to handle a market's current conditions.We have performed
experiments and compared against the state of the art. Results demonstrate that our method obtains predictive
errors (using mean absolute error) that are in the same order of magnitude than those errors obtained by
models generated using deep learning and models generated by random forest, AdaBoost, XGBoost, and
support-vector machines. Furthermore, we performed experiments that show that identifying specialized
agents yields better results.