Enhanced fuzzy-connective-based hierarchical aggregation network using particle swarm optimization |
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Authors: | Fang-Fang Wang |
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Affiliation: | Department of Industrial Engineering and Engineering Management, National Tsing Hua University, Taiwan, ROC |
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Abstract: | The fuzzy-connective-based aggregation network is similar to the human decision-making process. It is capable of aggregating and propagating degrees of satisfaction of a set of criteria in a hierarchical manner. Its interpreting ability and transparency make it especially desirable. To enhance its effectiveness and further applicability, a learning approach is successfully developed based on particle swarm optimization to determine the weights and parameters of the connectives in the network. By experimenting on eight datasets with different characteristics and conducting further statistical tests, it has been found to outperform the gradient- and genetic algorithm-based learning approaches proposed in the literature; furthermore, it is capable of generating more accurate estimates. The present approach retains the original benefits of fuzzy-connective-based aggregation networks and is widely applicable. The characteristics of the learning approaches are also discussed and summarized, providing better understanding of the similarities and differences among these three approaches. |
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Keywords: | fuzzy connectives information aggregation particle swarm optimization (PSO) decision analysis |
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