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Toward Effective Knowledge Acquisition with First-Order Logic Induction
作者姓名:张晓龙
作者单位:[1]ITSolutionDelivery,AXALifeInsuranceCompany,Tokyo,194-0022,Japan [2]DepartmentofComputerScience,TokyoInstituteofTechnology,Tokyo152-8552,Japan
摘    要:Knowledge acquisition with machine learning techniques is a fundamental requirement for knowledge discovery from databases and data mining systems.Two techniques in particular-inductive learning and theory revision-have been used toward this end.A method that combines both approaches to effectively acquire theories (regularity) from a set of training examples is presented.Inductive learning is used to acquire new regularity from the training examples;and theory revision is used to improve an initial theory.In addition,a theory preference criterion that is a combination of the MDL-based heuristic and the Laplace estimate has been successfully employed in the selection of the promising theory.The resulting algorithm developed by integrating inductive learning and theory revision and using the criterion has the ability to deal with complex problems,obtaining useful theories in terms of its predictive accuracy.

关 键 词:程序设计  知识获取  逻辑推理

Toward Effective Knowledge Acquisition with First-Order Logic Induction
Masyuki Numao.Toward Effective Knowledge Acquisition with First-Order Logic Induction[J].Journal of Computer Science and Technology,2002,17(5):0-0.
Authors:Masyuki Numao
Abstract:
Keywords:
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