2018
DOI: 10.3390/sym10110609
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A Fuzzy Classifier with Feature Selection Based on the Gravitational Search Algorithm

Abstract: This paper concerns several important topics of the Symmetry journal, namely, pattern recognition, computer-aided design, diversity and similarity. We also take advantage of the symmetric and asymmetric structure of a transfer function, which is responsible to map a continuous search space to a binary search space. A new method for design of a fuzzy-rule-based classifier using metaheuristics called Gravitational Search Algorithm (GSA) is discussed. The paper identifies three basic stages of the classifier cons… Show more

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Cited by 23 publications
(24 citation statements)
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“…Some procedures which often deal with fuzzy inclusion or entropy measurements concern feature selection, fuzzy classification, fuzzy controllers, fuzzy rules and similarity measures. There are several presentations of this kind (e.g., [112][113][114][115][116][117][118][119] are a few recent) and it would be extremely useful if a certain part of our work could be connected with (or even included in) some of these studies. This would be a significant aid to our research and we could better comprehend the attributes and the performance of these measures.…”
Section: Summary and Some Further Remarksmentioning
confidence: 99%
“…Some procedures which often deal with fuzzy inclusion or entropy measurements concern feature selection, fuzzy classification, fuzzy controllers, fuzzy rules and similarity measures. There are several presentations of this kind (e.g., [112][113][114][115][116][117][118][119] are a few recent) and it would be extremely useful if a certain part of our work could be connected with (or even included in) some of these studies. This would be a significant aid to our research and we could better comprehend the attributes and the performance of these measures.…”
Section: Summary and Some Further Remarksmentioning
confidence: 99%
“…As a probability function, the hyperbolic tangent was employed. In [37], binary gravitational search with S-shaped and V-shaped functions was used to select features for a fuzzy classifier; in [38], for a classifier based on k-nearest neighbors.…”
Section: Transfer Functionsmentioning
confidence: 99%
“…Thus, the number of terms for each feature is equal to the number of classes. The pseudo code of the algorithm for generating rule base by extreme feature values is provided in [32].…”
Section: Generalized Fuzzy Rule-based Classifier Structurementioning
confidence: 99%
“…Then the same calculations occur as in the binary version of the algorithm, but elements of each vector  are updated by adding to their current speed value. A detailed description of the algorithms and their pseudo-codes are presented by us in [32].…”
Section: Feature Selection and Tuning Fuzzy Rule Parameters With Tmentioning
confidence: 99%