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DKBLM——Deep Knowledge Based Learning Methodology

DKBLM——Deep Knowledge Based Learning Methodology
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摘要 To solve the Imperfect Theory Problem(ITP)faced by Explanation Based Generalization(EBG), this paper proposes a methodology,Deep Knowledge Based Learning Methodology(DKBLM)by name, and gives an implementstion of DKBLM,called Hierarchically Distributed Learning System(HDLS).As an example of HDLS's application,this paper shows a learning system(MLS)in meteorology domain and its running with a simplified example. DKBLM can acquire experiential knowledge with causality in it.it is applicable to those kinds of domains,in which experiments are relatively difficult to carry out,and in which there exist many available knowledge systems at different levels for the same domain(such as weather forecasting). To solve the Imperfect Theory Problem(ITP)faced by Explanation Based Generalization(EBG), this paper proposes a methodology,Deep Knowledge Based Learning Methodology(DKBLM)by name, and gives an implementstion of DKBLM,called Hierarchically Distributed Learning System(HDLS).As an example of HDLS's application,this paper shows a learning system(MLS)in meteorology domain and its running with a simplified example. DKBLM can acquire experiential knowledge with causality in it.it is applicable to those kinds of domains,in which experiments are relatively difficult to carry out,and in which there exist many available knowledge systems at different levels for the same domain(such as weather forecasting).
作者 马志方
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 1993年第4期379-384,共6页 计算机科学技术学报(英文版)
关键词 Machine learning explanation based learning deep knowledge Machine learning explanation based learning deep knowledge
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