Learning and reasoning method of hybrid Bayesian network

A Bayesian network and inference method technology, applied in the field of anomaly detection and localization of Bayesian networks, can solve problems such as insufficient accuracy and timeliness, achieve good accuracy and timeliness, simplify parameter learning steps, and ensure The effect of computational efficiency

Pending Publication Date: 2020-05-08
GUANGDONG UNIV OF TECH
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Problems solved by technology

[0007] The present invention provides a hybrid Bayesian network learning and reasoning method to overcome the shortcomings of

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  • Learning and reasoning method of hybrid Bayesian network
  • Learning and reasoning method of hybrid Bayesian network
  • Learning and reasoning method of hybrid Bayesian network

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Embodiment 1

[0058] This embodiment provides a learning and reasoning method for a hybrid Bayesian network, such as figure 1 As shown, the learning and reasoning method includes the following steps:

[0059] S1: Use the supervised top-down discretization algorithm CACC (Class-Stribbute Contingency Coefficient) to discretize continuous variables;

[0060] S2: Gibbs Sampling (Gibbs sampling) algorithm is used to solve the parameter learning problem of incomplete data sets, and a complete hybrid Bayesian network model is obtained;

[0061] S3: Using the Markov chain Monte Carlo algorithm (MCMC) and the joint tree algorithm as a hybrid Bayesian network reasoning algorithm to seek a reasoning algorithm that is more suitable for the application scenario.

[0062] After the present invention builds the hybrid Bayesian network model, according to different scenarios, according to needs, select Markov chain Monte Carlo algorithm (MCMC) or joint tree algorithm, reason it, and then get "abnormal det...

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Abstract

The invention relates to a learning and reasoning method for a hybrid Bayesian network, and the method comprises the steps: S1, the discretization of a continuous variable is carried out through employing a supervised top-down discretization algorithm CACC; s2, a Gibbs Sampling algorithm is adopted to solve the parameter learning problem of an incomplete data set, and a complete hybrid Bayesian network model is obtained; and S3, a Markov chain Monte Carlo algorithm (MCMC) and a joint tree algorithm are adopted as a hybrid Bayesian network inference algorithm, and an inference algorithm more suitable for an application scene is sought. The continuous variables are discretized by adopting the CACC algorithm, so that the calculation efficiency is ensured; according to the parameter learning method of the incomplete data set adopted by the invention, the parameter learning steps are simplified, the network construction period is shortened, and the occurrence of extreme data is avoided. Thetwo hybrid Bayesian network reasoning methods adopted by the invention are good in accuracy and timeliness.

Description

technical field [0001] The invention relates to the field of abnormal detection and positioning of Bayesian networks, and more specifically, to a learning and reasoning method of mixed Bayesian networks. Background technique [0002] Bayesian network is one of the most effective theories in the field of uncertain knowledge representation and reasoning, and is widely accepted because of its friendly explanation of causality. Its main idea is to take into consideration the process rules during the production or operation of mechanical equipment, use statistical thinking to process historical data, transform influencing factors into dependencies, and fully integrate theoretical knowledge with knowledge of practical application scenarios. For Bayesian networks that contain both discrete nodes and continuous nodes, they are generally referred to as Hybrid Bayesian Networks. Due to the particularity of its continuous nodes, the hybrid Bayesian network generally discretizes the da...

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Application Information

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IPC IPC(8): G06K9/62
CPCG06F18/24155G06F18/24323G06F18/295
Inventor 朱成就徐康康杨海东印四华杨慧芳
Owner GUANGDONG UNIV OF TECH
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