Method for getting expert system knowledge based on support vector machine

A support vector machine and expert system technology, applied in the field of knowledge acquisition of expert systems based on support vector machines, can solve problems such as difficult to control the quality of rules, low comprehensibility, and complex knowledge rules

Active Publication Date: 2013-04-10
NANJING UNIV OF AERONAUTICS & ASTRONAUTICS
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Problems solved by technology

However, the overlap between the elliptical rules obtained by this method is serious, and because the K-means clustering effect is too dependent on the initial value of the cluster center, it is difficult to control the number of rules and the quality of the rules by this rule extraction method ; The other is: SVM-based hyperrectangular rule extraction algorithm, first map the training samples to the high-dimensional feature space to obtain the support vectors o

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  • Method for getting expert system knowledge based on support vector machine
  • Method for getting expert system knowledge based on support vector machine
  • Method for getting expert system knowledge based on support vector machine

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Embodiment Construction

[0052] A kind of expert system knowledge acquisition method based on support vector machine described in the present invention, combines figure 1 The shown structure exemplifies the present invention in detail, and verifies the practical effect of the method described in the present invention.

[0053] Taking the oil spectrum data of a military aero-engine as an example, the data contains 237 samples of 10 aero-engines in normal and worn states. The contents of the seven elements, Fe, Al, Cu, Cr, Ag, Ti, and Mg, correspond to (A1~A7) respectively as the condition attributes of the sample instance. The wear state "F" is divided into three forms: "1" - normal state, "2" - bearing wear between shafts, and "3" - bearing wear between shafts and broken cage. The wear state "F" is used as the decision attribute D of the instance. Table 1 is part of the data.

[0054] Table 1 Partial raw data of spectral oil sample analysis

[0055]

[0056] Among the 237 sample data, there are...

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Abstract

The invention provides a method for getting expert system knowledge based on a support vector machine. A rule extracting process based on the support vector machine comprises data preprocessing, clustering of support vectors, extracting and simplifying of a super-rectangular rule, and sample identifying based on the rule. The method has the advantages that after the feature extracting and the rule simplifying are carried out, the extracted rule is more concise and is easier to explain; when a clustering and distributing matrix is calculated, only the support vectors are clustered and identified, so the calculation amount is greatly reduced; the rule extracting method is advanced, and the diagnosing and identifying rate is higher; the support vector machine is an emerging classifying technique for data mining, and has a solid theoretical foundation and a favorable generalizing performance; and the method can be used for effectively getting the rule of the expert system knowledge, and the bottleneck of dynamic getting of the expert system knowledge is broken through.

Description

technical field [0001] The invention belongs to the technical field of information processing, in particular to an expert system knowledge acquisition method based on a support vector machine. Background technique [0002] At present, knowledge acquisition based on data mining mainly obtains knowledge from some existing data through some algorithms in machine learning or mathematical statistics. Among them, association analysis, artificial neural network, rough set and decision tree are widely used in data mining. If these algorithms can be combined with current practical applications, knowledge rules can be automatically obtained from actual data, effectively breaking through the bottleneck of knowledge acquisition. It will greatly enhance the intelligent level and knowledge acquisition ability of the expert system. [0003] In recent years, as a new classification technology in data mining, support vector machine, perfect generalization theory guidance and powerful nonli...

Claims

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Application Information

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IPC IPC(8): G06F17/30G06K9/62G06N3/12
Inventor 李爱陈果王洪伟郝腾飞于明月程小勇
Owner NANJING UNIV OF AERONAUTICS & ASTRONAUTICS
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