Abstract

Granular computing is a method of studying human intelligent information processing, which has advantage of knowledge discovery. In this paper, we convert a classification problem of sample space into a classification problem of fuzzy clustering granular space and propose a random fuzzy clustering granular hyperplane classifier (RFCGHC) from the perspective of granular computing. Most classifiers are only used to process numerical data, RFCGHC can process not only non-numerical data, such as information granules, but also numerical data. The classic granulation method is generally serial granulation, which has high time complexity. We design a parallel distributed granulation method to enhance efficiency. First, a clustering algorithm with adaptive cluster center number is proposed, where the ratio of standard deviation between categories and standard deviation within categories is as evaluation criterion. The clusters and the optimal amount of cluster centers can be achieved by the method. On the basis of these, sample set can be divided into many subsets and each sample can be granulated by these cluster centers. Then, a fuzzy clustering granular space can be formed, where fuzzy clustering granules, fuzzy clustering granular vectors, and their operators can be defined. In order to get the optimal hyperplane in the fuzzy clustering granular space to classify these samples, we design a loss function and evaluate each category with probability by fuzzy clustering granular hyperplane. In solving the loss function, genetic algorithm based on fuzzy clustering granules is adopted. Experimental results and theoretical analysis show that RFCGHC has good performance.

Highlights

  • C LASSIFICATION problem is one of the common problems faced by human beings in production and life

  • In fuzzy clustering granule space, we can find an optimal fuzzy clustering granular hyperplane to classify samples, of which parameters can be learned by optimizing the loss function by genetic algorithm

  • We present a random fuzzy clustering granular hyperplane classifier in the paper

Read more

Summary

INTRODUCTION

C LASSIFICATION problem is one of the common problems faced by human beings in production and life. When using a supervised learning to construct a classifier model, a given set of inputs is required to determine the ground truth This input and output data are named as a training sample set. When an unsupervised learning method is used to construct a classifier, the training of the model does not rely on external supervision signals That is, it is the lack of input and output sample pairs for the current environment. Granular computing uses the three-element model of granular, granular layer and granular structure to abstract, decompose, synthesize, transform and analyze real problems It can form an information analysis, processing and problem solving method, which is similar to human thinking, cognition and reasoning. Granular computing has been widely used, such as using granular computing and reply state networks to build error diagnosis models [38], building neural networks from a granular perspective for classification [39], [40] etc

CONTRIBUTIONS
THE MAIN ALGORITHM
PRINCIPLE OF ADAPTIVE RANDOM CLUSTERING
FUZZY GRANULATION OF DATA
MULTI-CLASSIFICATION PROBLEM
EXPERIMENTAL ANALYSIS
Findings
CONCLUSION

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.