RFIS: Regression-based Fuzzy Inference System

RFIS is a novel simple fuzzy inference system without explicitly defined fuzzy rules based on linear and nonlinear regressions.
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Mise à jour 16 déc. 2022

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This project concerns training fuzzy systems on the basis of linear and nonlinear regressions. These systems use Gaussian fuzzy sets for the inputs and linearly and nonlinearly parameterized system functions to obtain the output. The linear regression is realized by the ridge regression and the nonlinear regression by Levenberg-Marquardt algorithm. The input fuzzy sets are determined by a multi-objective genetic algorithm with a feature selection method. In the case of linearly parameterized system functions, the following methods are considered: F-test and a regression tree. In the case of nonlinearly parameterized system functions, terms from the so-called term matrix are coded in an individual and they are selected by using a genetic algorithm. The multi-criteria objective functions enable the selection of models from the Pareto fronts taking into account the compromise between model accuracy and its simplification.
The package contains an example of using the RFIS method to predict a time series based on the Box-Jenkins gas furnace data set. The data can be downloaded from: https://openmv.net/info/gas-furnace
The second example of using the RFIS method concers the problem of the evaluation of an authentication procedure for banknotes. The data can be downloaded from: https://archive.ics.uci.edu/ml/datasets/banknote+authentication
Using this method, please cite as:
Wiktorowicz K., 'RFIS: regression-based fuzzy inference system', Neural Computing and Applications, 2022, vol. 34, pp. 12175–12196, DOI: 10.1007/s00521-022-07105-8
Available at:
To see a simple example, run:
illustrative_example
To predict a time-series for Box-Jenkins data, run:
boxjen_main.m
boxjen_optim.m
or
boxjen_main_nlm.m
boxjen_optim_nlm.m
To classify banknotes, run
banknote_main.m
banknote_optim.m

Citation pour cette source

Krzysztof Wiktorowicz (2024). RFIS: Regression-based Fuzzy Inference System (https://www.mathworks.com/matlabcentral/fileexchange/95848-rfis-regression-based-fuzzy-inference-system), MATLAB Central File Exchange. Récupéré le .

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Créé avec R2020a
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Version Publié le Notes de version
1.1.3

Updated files.

1.1.2

Updated files.

1.1.1

Updated description.

1.1.0

Updated function evalrfis.m

1.0.11

Updated description.

1.0.10

Updated description.

1.0.8

Updated functions boxjen_objfun and banknote_objfun.

1.0.7

Files upload corrected.

1.0.6

Added example of classification.

1.0.5

Updated description. Added image.

1.0.4

Added function evalrfis.

1.0.3

Description and files update.

1.0.2

Fixed some function calls.

1.0.1

Corrected call to the function illustrative_fun_nlm in illustrative_example.

1.0.0