On the learning of rule uncertainties and their integration into probabilistic knowledge bases

作者:Beat Wüthrich

摘要

We present a natural and realistic knowledge acquisition and processing scenario. In the first phase a domain expert identifies deduction rules that he thinks are good indicators of whether a specific target concept is likely to occur. In a second knowledge acquisition phase, a learning algorithm automatically adjusts, corrects and optimizes the deterministic rule hypothesis given by the domain expert by selecting an appropriate subset of the rule hypothesis and by attaching uncertainties to them. Then, in the running phase of the knowledge base we can arbitrarily combine the learned uncertainties of the rules with uncertain factual information.

论文关键词:computational learning, probability theory, stratified Datalog, uncertainty

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论文官网地址:https://doi.org/10.1007/BF00962070