Implementing Inductive Concept Learning For Cooperative Query Answering
نویسندگان
چکیده
Generalization operators have long been studied in the area of Conceptual Inductive Learning (Michalski, 1983; De Raedt, 2010). We present an implementation of these learning operators in a prototype system for cooperative query answering. The implementation can however also be used as a usual concept learning mechanism for concepts described in first-order predicate logic. We sketch an extension of the generalization process by a ranking mechanism on answers for the case that some answers are not related to what user asked.
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