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# FPFS-AC | ||
A New Classification Method Using Soft Decision-Making Based on an Aggregation Operator of Fuzzy Parameterized Fuzzy Soft Matrices | ||
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Citation: | ||
S. Memiş, S. Enginoğlu, and U. Erkan, 2022. A New Classification Method Using Soft Decision-Making Based on an Aggregation Operator of Fuzzy | ||
Parameterized Fuzzy Soft Matrices, Turkish Journal of Electrical Engineering and Computer Sciences, 30(3), 1165–1180. | ||
doi: https://doi.org/10.55730/1300-0632.3816 | ||
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Abstract: | ||
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Recently, a precise and stable machine learning algorithm, i.e. eigenvalue classification method (EigenClass), has been developed by using | ||
the concept of generalised eigenvalues in contrast to common approaches, such as k-nearest neighbours, support vector machines, and decision trees. | ||
In this paper, we offer a new classification algorithm called fuzzy parameterized fuzzy soft aggregation classifier (FPFS-AC) to combine the modelling | ||
ability of soft decision-making (SDM) and classification success of generalised eigenvalues. FPFS-AC constructs a decision matrix by employing | ||
the similarity measures of fuzzy parameterized fuzzy soft matrices fpfs -matrices) and a generalised eigenvalue-based similarity measure. | ||
Then, it applies an SDM method based on the aggregation operator of fpfs -matrices to a decision matrix and classifies the given test sample. | ||
Afterwards, we perform an experimental study using 15 UCI datasets to manifest the success of our approach and compare FPFS-AC with the well-known and | ||
state-of-the-art classifiers (kNN, SVM, fuzzy kNN, EigenClass, and BM-fuzzy kNN) in terms of accuracy, precision, recall, macro F-score, micro F-score, | ||
and running time. Moreover, we statistically analyse the experimentally obtained data. Experimental and statistical results show that FPFS-AC outperforms | ||
the state-of-the-art classifiers in all the datasets concerning the five performance metrics. |