Abstract

Complex fuzzy theory has strong practical background in many important applications, especially in decision-making support systems. Recently, the Mamdani Complex Fuzzy Inference System (M-CFIS) has been introduced as an effective tool for handling events that are not restricted to only values of a given time point but also include all values within certain time intervals (i.e., the phase term). In such decision-making problems, the complex fuzzy theory allows us to observe both the amplitude and phase values of an event, thus resulting in better performance. However, one of the limitations of the existing M-CFIS is the rule base that may be redundant to a specific dataset. In order to handle the problem, we propose a new Mamdani Complex Fuzzy Inference System with Rule Reduction Using Complex Fuzzy Measures in Granular Computing called M-CFIS-R. Several fuzzy similarity measures such as Complex Fuzzy Cosine Similarity Measure (CFCSM), Complex Fuzzy Dice Similarity Measure (CFDSM), and Complex Fuzzy Jaccard Similarity Measure (CFJSM) together with their weighted versions are proposed. Those measures are integrated into the M-CFIS-R system by the idea of granular computing such that only important and dominant rules are being kept in the system. The difference and advantage of M-CFIS-R against M-CFIS is the usage of the training process in which the rule base is repeatedly changed toward the original base set until the performance is better. By doing so, the new rule base in M-CFIS-R would improve the performance of the whole system. Experiments on various decision-making datasets demonstrate that the proposed M-CFIS-R performs better than M-CFIS.

Highlights

  • Zadeh [1] proposed fuzzy set (FS) as an approach for representing and processing vagueness found abundantly in the real world

  • The similarities of complex fuzzy rules are determined by granular computing according to each label of Validation data

  • Mamdani Complex Fuzzy Inference System (M-CFIS)-R on the UCI datasets are visually presented in Figures 4 and 5, respectively

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Summary

Introduction

Zadeh [1] proposed fuzzy set (FS) as an approach for representing and processing vagueness found abundantly in the real world. The complex fuzzy measures (t-norm and t-conorm) in Mamdani CFIS (M-CFIS) were introduced in [23], where the obtained rule set in M-CFIS directly affects to the results of decision-making. Similarity Measure (CFDSM), and Complex Fuzzy Jaccard Similarity Measure (CFJSM) together with their weighted versions are proposed. Those measures are integrated into the M-CFIS-R system by the idea of Granular Computing where only important and dominant rules will be kept in the system. These complex fuzzy measures are used to evaluate the similarity among complex fuzzy rules in the rule set of M-CFIS. The performance of proposed method is experimentally validated on various decision-making datasets

Complex Fuzzy Measures
Fuzzy Inference System in Complex Fuzzy Set
Complex Fuzzy Set
Granular Computing
Main Ideas
Training
Evaluating Performance of the Rule-Based System
Complex
Granular Complex Fuzzy Measures
Testing
Experimental Environment
Experimental Results on the Benchmark UCI Datasets
Experimental Results on the Real Datasets
Results and Limitations
Conclusions
Full Text
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