Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series Predicting

As a soft computing method, applying fuzzy cognitive map (FCM) to time series prediction has become a timely issue pursued by numerous researchers. Although many FCM construction methods have emerged, most of them exhibit obvious limitations in weight learning especially for long-term or complex tim...

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Published in:IEEE Access
Main Authors: Dan Shan, Li Wang, Wei Lu, Jun Chen
Format: Article
Language:English
Published: IEEE 2024-01-01
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10401927/
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author Dan Shan
Li Wang
Wei Lu
Jun Chen
author_facet Dan Shan
Li Wang
Wei Lu
Jun Chen
author_sort Dan Shan
collection DOAJ
container_title IEEE Access
description As a soft computing method, applying fuzzy cognitive map (FCM) to time series prediction has become a timely issue pursued by numerous researchers. Although many FCM construction methods have emerged, most of them exhibit obvious limitations in weight learning especially for long-term or complex time series. Either the weight calculation is computationally expensive, or it cannot achieve gratifying accuracy. In this paper, a new method for constructing FCM is proposed which extracts concepts from data by exploiting triangular membership function, and the weights of high-order FCM are subtly obtained by transforming the learning problem of FCM into a convex optimization problem with constraints. Since then, FCM with optimized weights is used to represent fuzzy logical relationships of time series and implement prediction further. Fifteen benchmark time series,such as Soybean Price time series, Yahoo stock time series, Condition monitoring of hydraulic systems time series etc. are applied to verify prediction performance of the proposed method. Accordingly, experiment results show that the proposed numerical prediction method of time series is effective and can acquire better prediction accuracy with lower computation time than other recent advanced methods. In addition, the influence of parameters of the method is analyzed individually.
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spelling doaj-art-80edef6d08ca4f3787378da2e49ac9f72025-08-19T23:52:59ZengIEEEIEEE Access2169-35362024-01-0112126831269810.1109/ACCESS.2024.335519410401927Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series PredictingDan Shan0https://orcid.org/0000-0002-8751-0761Li Wang1Wei Lu2https://orcid.org/0000-0002-5775-1222Jun Chen3Department of Electronic Engineering, Dalian Neusoft University of Information, Dalian, ChinaDepartment of Electronic Engineering, Dalian Neusoft University of Information, Dalian, ChinaSchool of Control Science and Engineering, Dalian University of Technology, Dalian Liaoning, Ganjingzi, ChinaSchool of Materials, Dalian University of Technology, Dlian Liaoning, Ganjingzi, ChinaAs a soft computing method, applying fuzzy cognitive map (FCM) to time series prediction has become a timely issue pursued by numerous researchers. Although many FCM construction methods have emerged, most of them exhibit obvious limitations in weight learning especially for long-term or complex time series. Either the weight calculation is computationally expensive, or it cannot achieve gratifying accuracy. In this paper, a new method for constructing FCM is proposed which extracts concepts from data by exploiting triangular membership function, and the weights of high-order FCM are subtly obtained by transforming the learning problem of FCM into a convex optimization problem with constraints. Since then, FCM with optimized weights is used to represent fuzzy logical relationships of time series and implement prediction further. Fifteen benchmark time series,such as Soybean Price time series, Yahoo stock time series, Condition monitoring of hydraulic systems time series etc. are applied to verify prediction performance of the proposed method. Accordingly, experiment results show that the proposed numerical prediction method of time series is effective and can acquire better prediction accuracy with lower computation time than other recent advanced methods. In addition, the influence of parameters of the method is analyzed individually.https://ieeexplore.ieee.org/document/10401927/Fuzzy cognitive mapconvex optimizationtime series
spellingShingle Dan Shan
Li Wang
Wei Lu
Jun Chen
Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series Predicting
Fuzzy cognitive map
convex optimization
time series
title Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series Predicting
title_full Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series Predicting
title_fullStr Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series Predicting
title_full_unstemmed Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series Predicting
title_short Convex Optimization Based High-Order Fuzzy Cognitive Map Modeling and Its Application in Time Series Predicting
title_sort convex optimization based high order fuzzy cognitive map modeling and its application in time series predicting
topic Fuzzy cognitive map
convex optimization
time series
url https://ieeexplore.ieee.org/document/10401927/
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AT liwang convexoptimizationbasedhighorderfuzzycognitivemapmodelinganditsapplicationintimeseriespredicting
AT weilu convexoptimizationbasedhighorderfuzzycognitivemapmodelinganditsapplicationintimeseriespredicting
AT junchen convexoptimizationbasedhighorderfuzzycognitivemapmodelinganditsapplicationintimeseriespredicting