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Hybrid clustering algorithm based on adaptive cellular inheritance and optimal fuzzy C-means

A clustering algorithm and adaptive technology, applied in the field of hybrid clustering algorithm based on adaptive cellular genetics and optimized fuzzy C-means, can solve problems such as falling into local extremum, reducing search efficiency, and slow optimization speed

Inactive Publication Date: 2017-05-31
NANCHANG HANGKONG UNIVERSITY
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AI Technical Summary

Problems solved by technology

However, because the cellular genetic algorithm limits the positional relationship between individuals, the information exchange between individuals is also limited within their neighborhood, which reduces the efficiency of optimization search, so the optimization speed is generally slow.
The fuzzy C-means converges quickly, but it is easy to fall into local extremum

Method used

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  • Hybrid clustering algorithm based on adaptive cellular inheritance and optimal fuzzy C-means
  • Hybrid clustering algorithm based on adaptive cellular inheritance and optimal fuzzy C-means
  • Hybrid clustering algorithm based on adaptive cellular inheritance and optimal fuzzy C-means

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Embodiment

[0164] In order to verify the effect of the present invention, artificial data sets and UCI real data sets are used as test sample sets, wherein artificial data sets can better control data characteristics, which is conducive to understanding the performance of algorithms; the second is the UCI machine recognition knowledge base Clustering of famous real data sets, which are downloaded from http: / / archive.ics.uci.edu / ml / , including 7 data sets of Iris, Wine, Glass, Heart disease, Cancer, Prima and Image segmentation set. 6 artificial datasets such as Figure 3a ~ Figure 3f As shown, each dataset represents different levels of coincidence, different scales, and class shapes, and the data points in each dataset are randomly generated using a Gaussian distribution. The details of the 13 data sets used are shown in Tables 1 and 2, which reflect different clustering difficulties and are very representative.

[0165] Table 1 Main characteristics of the artificial dataset and UCI r...

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Abstract

The invention discloses a hybrid clustering algorithm based on adaptive cellular inheritance and optimal fuzzy C-means. The algorithm comprises the following steps that: utilizing Arnold Cat mapping to generate an initial population, and constructing a fitness function on the basis of the clustering criteria of the C-means; decoding individuals in the population to obtain a corresponding clustering center, distributing a degree of membership, and calculating a fitness value and the entropy of the population; carrying out state evolution on each individual, carrying out selection, dynamic intersection and a combined variation operation based on the entropy; automatically determining the fusion opportunity of the fuzzy C-means, and utilizing an implementation criteria to carry out a fuzzy C-means iterative operation; and judging whether an end condition is achieved or not, and outputting a final clustering result if the end condition is met. By use of the algorithm, the characteristics of the high global search capability of an adaptive cellular genetic algorithm and the high local search capability of a fuzzy C-means algorithm are further utilized. Compared with the prior art, the algorithm is characterized in that higher clustering efficiency and accuracy can be obtained.

Description

technical field [0001] The invention relates to a fuzzy clustering method, in particular to a hybrid clustering algorithm based on self-adaptive cell genetics and optimal fuzzy C-means. Background technique [0002] With the rapid development of computer and storage technology, the amount of data available to people is increasing exponentially. In the face of massive data, how to use computers to automatically classify data into different categories according to certain topics and extract useful and highly relevant knowledge has become increasingly important. Therefore, clustering technology is widely used in many fields such as data mining, machine recognition, image segmentation, fault diagnosis and pattern recognition. As an important method to find the natural aggregation structure of data, cluster analysis is mainly divided into hard clustering and fuzzy clustering. The hard clustering algorithm is simple and less time-consuming, but it is not suitable for dealing wit...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/12
CPCG06N3/126G06F18/23211
Inventor 揭丽琳刘卫东
Owner NANCHANG HANGKONG UNIVERSITY
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