Journal of Systems Engineering and Electronics ›› 2006, Vol. 17 ›› Issue (1): 193-199.doi: 10.1016/S1004-4132(06)60034-0

• COMPUTER DEVELOPMENT AND PRACTICE • Previous Articles     Next Articles

Causal association rule mining methods based on fuzzy state description

Liang Kaijian 1 ' 2 ,  Liang Quan 2 & Yang  Bingru 2   

  1. l.Dept. of Computer, Hunan Inst. of Engineering, Xiangtan 411101, P. R.China;
    2. School of Information and Engineering, Univ. of Science and Technology Beijing, Beijing 100083, P. R. China
  • Online:2006-03-24 Published:2019-12-19

Abstract:

Aiming at the research that using more new knowledge to develope knowledge system with dynamic accordance, and under the background of using Fuzzy language field and Fuzzy language values structure as description framework, the generalized cell Automation that can synthetically process fuzzy indeterminacy and random indeterminacy and generalized inductive logic causal model is brought forward. On this basis, a kind of the new method that can discover causal association rules is provded. According to the causal information of standard sample space and commonly sample space, through constructing its state (abnormality) relation matrix, causal association rules can be gained by using inductive reasoning mechanism. The estimate of this algorithm complexity is given,and its validity is proved through case.

Key words: knowledge discovery, language field, language value structure, generalized cell automation, generalized inductive logic causal model, causal association rule