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Self Learning or How to Make a Knowledge Base Curious about Itself

机译:自学或如何让知识库好奇自己

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The inference process in a probabilistic and conditional environment under minimum relative entropy, is briefly repeated following the steps knowledge acquisition, query and response. In general, acquired knowledge suffers from first and second order uncertainty. First order uncertainty is missing information in the knowledge base; second order uncertainty is the vagueness or non-reliability of the system's response to a query. Both, first and second order uncertainty can be reduced by adequate additional information. In the present paper we develop the idea of a self learning knowledge base. Once the system detects a not justifiable vagueness in a recent answer it informs the user about the second order uncertainty and requires additional information in an intelligible syntactical form. This communication reduces both, first and second order uncertainty in general. Suitable examples accompany the theoretical considerations; they are modelled and calculated by means of the expert system shell SPIRIT.
机译:在步骤知识获取,查询和响应之后,简要重复在最小相对熵下的概率和条件环境下的推理过程。一般而言,获得的知识遭受了第一和二阶不确定性。第一订单不确定性在知识库中缺少信息;二阶不确定性是系统对查询响应的模糊或不可靠性。可以通过适当的附加信息来减少第一和第二顺序的不确定性。在本文中,我们培养了自学知识库的想法。一旦系统在最近的答案中检测到不合理的模糊,它会通知用户对二阶不确定性并以可理解的语法形式需要其他信息。该通信通常减少了一般的,第一和二阶不确定性。合适的例子伴随着理论考虑;它们通过专家系统壳精神进行建模和计算。

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