Using Background Knowledge to Build Multistrategy Learners
作者:Claude Sammut
摘要
This paper discusses the role that background knowledge can play in building flexible multistrategy learning systems. We contend that a variety of learning strategies can be embodied in the background knowledge provided to a general purpose learning algorithm. To be effective, the general purpose algorithm must have a mechanism for learning new concept descriptions that can refer to knowledge provided by the user or learned during some other task. The method of knowledge representation is a central problem in designing such a system since it should be possible to specify background knowledge in such a way that the learner can apply its knowledge to new information.
论文关键词:Multistrategy learning, inductive logic programming, background knowledge, knowledge representation
论文评审过程:
论文官网地址:https://doi.org/10.1023/A:1007313824964