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Parameter selection method for support vector machine based on hybrid bat algorithm

A technology of support vector machine and bat algorithm, applied in computer parts, calculation, calculation model and other directions, can solve the problems of short convergence time, the solution accuracy cannot meet the target requirements, and the algorithm is premature.

Inactive Publication Date: 2018-06-05
BEIJING UNIV OF TECH
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Problems solved by technology

[0005] The bat algorithm has the advantages of swarm intelligence algorithms, such as powerful global search range and short convergence time. Alaa Tharwat used it for SVM parameter selection and achieved good experimental results, but there are also some common shortcomings of swarm intelligence algorithms. , such as the premature phenomenon of the algorithm is prone to occur, and the solution accuracy cannot meet the target requirements, etc.

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  • Parameter selection method for support vector machine based on hybrid bat algorithm
  • Parameter selection method for support vector machine based on hybrid bat algorithm
  • Parameter selection method for support vector machine based on hybrid bat algorithm

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Embodiment Construction

[0063] The configuration of the experimental platform is as follows: CPU model Intel Core i5-4590, memory size 8GB, operating system 64-bit Window 7 and Matlab 2017b.

[0064] In this paper, Iris (iris data set), Ionosphere (ionosphere data set), Liver-disorders (liver injury data set), Breast cancer (breast cancer data set) and Sonar (sonar data set) in the UCI machine learning database are used. ) for experimental verification. The dataset details are characterized as follows:

[0065] Table 1 Experimental data details

[0066] data set

dimension

Number of samples

Number of categories

Iris

4

150

3

Ionosphere

34

351

2

Liver-disorders

6

345

2

breast cancer

13

683

2

Sonar

60

208

2

[0067] The adjustment of parameters is as important as designing a good algorithm itself. Next, we will first study the relevant values ​​of the differential evolution bat alg...

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Abstract

The invention discloses a parameter selection method for a support vector machine based on a hybrid bat algorithm. Regularization parameters and RBF kernel parameters have great influences on the learning performance and computation complexity. On the basis of analyzing the advantages and disadvantages of some classical parameter selection methods, an intelligent optimization algorithm is introduced to perform optimization on the parameters. The bat algorithm has the advantages of concurrency, high convergence speed and strong robustness. The bat algorithm is firstly utilized to perform optimization on the SVM parameters, then crossover, selection and mutation operators of differential evolution algorithm are introduced in allusion to a defect of early maturing of the bat algorithm, the position is further adjusted according to the three operators in each iteration process by using a bat individual, the search ability of the algorithm is enhanced, the algorithm is avoided from prematurely falling into a local optimal solution, and finally the SVM parameter selection is optimized by using an improved DEBA algorithm to obtain an excellent effect.

Description

technical field [0001] The invention belongs to the field of artificial intelligence and machine learning, and relates to an improvement in parameter selection of an intelligent discrimination method of a support vector machine (Support Vector Machine, SVM) model. Background technique [0002] Support Vector Machine (Support Vector Machine, SVM) is a classifier based on the structural risk minimization principle of computational learning theory and the VC dimension theory. Its main idea is to find an optimal hyperplane in the high-level space as the division of the two categories for the two-category classification problem, so as to ensure the minimum classification error rate. Compared with traditional classifiers that only use the principle of minimizing empirical risk as a model, SVM can effectively avoid over-fitting when dealing with small samples, and SVM has a good classification effect on linearly inseparable problems. After it came out, it has received extensive at...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/00
CPCG06N3/006G06F18/2411
Inventor 曹东芝张兴兰宁振虎蒋雨辰薛菲梁鹏
Owner BEIJING UNIV OF TECH
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