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Method for solving minimum attribute reduction by combining local opponent learning and social spider algorithm

A technology of attribute reduction and spider, which is applied in the direction of calculation, calculation model, biological model, etc., can solve the problems that affect the running time and generate all reductions unrealistically

Inactive Publication Date: 2020-11-17
GUILIN UNIV OF ELECTRONIC TECH
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AI Technical Summary

Problems solved by technology

But in practice, it is unrealistic to generate all reductions, and the minimum attribute reduction problem is an NP-hard problem
However, the introduction of an adversarial learning mechanism for intelligent algorithms is usually accompanied by a large amount of computational redundancy, and with the increase of individuals in the intelligent algorithm and the increase in the number of iterations, the amount of calculation generated by adversarial learning seriously affects the running time.

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  • Method for solving minimum attribute reduction by combining local opponent learning and social spider algorithm
  • Method for solving minimum attribute reduction by combining local opponent learning and social spider algorithm
  • Method for solving minimum attribute reduction by combining local opponent learning and social spider algorithm

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Embodiment Construction

[0084] The present invention will be described in further detail below in conjunction with the accompanying drawings to better understand the content of the present invention, but the present invention is not limited to the following embodiments.

[0085] refer to Figure 1 to Figure 4 , the present invention combines local adversarial learning and social spider algorithm to solve the method for minimum attribute reduction, comprising the following steps:

[0086] 1) Initialize the parameters of the social spider algorithm and calculate the number of female spiders N f , the number of male spiders N m , the number of male spiders N m , female spider position x f , male spider position x m , the fitness value F of each spider, where,

[0087] Initialize the social spider algorithm parameters include:

[0088] The total number of spiders N, which is the number of female spiders N f and the number of male spiders N m and

[0089] The threshold PF of the spider approachin...

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Abstract

The invention discloses a method for solving minimum attribute reduction by combining local opponent learning and a social spider algorithm, which comprises the following steps: proposing a similarityconstraint at the beginning of iteration to keep individuals in a population in a good state, introducing opponent learning in the iteration process, designing a local opponent learning strategy to expand the search range, and optimizing the search result; increasing the convergence speed; and furthermore, adopting a redundancy detection mechanism to carry out redundancy detection on the globallyoptimal solution to guarantee minimum attribute reduction as much as possible. According to the method, effective minimum reduction can be found under most conditions, the operation time is shorter,and meanwhile the convergence speed is higher; and along with the increase of a data set, a better performance can also be shown.

Description

technical field [0001] The invention relates to the field of data mining and knowledge discovery, in particular to a method for solving minimum attribute reduction by combining local adversarial learning and social spider algorithm. Background technique [0002] With the development of society, the scale of data increases exponentially, and a large number of noisy, irrelevant or misleading features are generated in the data. Rough Set Theory (RST) is a mathematical tool for dealing with uncertain, imprecise and fuzzy data. Rough sets are widely used in many fields, such as machine learning, feature selection, data mining, image processing, pattern recognition. RST can remove redundant attributes in data by discovering dependencies in data without any prior information. Given a dataset with discretized values, a subset (reduction) of the original set can be found via RST. At present, many scholars have conducted extensive research in the field of attribute reduction. Amon...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/00G06K9/62
CPCG06N3/006G06F18/22G06F18/24
Inventor 危前进王承先常亮黄桂敏
Owner GUILIN UNIV OF ELECTRONIC TECH
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