RL4:基于知识的归纳工具

S. Clearwater, F. Provost
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引用次数: 112

摘要

讨论了基于知识的归纳程序对问题求解的重要性。给出了基于知识的归纳程序所需的条件,并讨论了基于知识的归纳程序在语境学习分类中的应用实例。采用归纳程序RL4作为归纳工具,并给出了归纳程序过去和现在使用的几个例子。该工具的强大之处在于它在性能系统中的灵活性和易用性。还讨论了RL4与使用用户定义或默认证据收集策略的推理引擎的使用。最后,对RL4未来的发展方向进行了展望。
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RL4: a tool for knowledge-based induction
The importance of knowledge-based induction programs for problem solving is discussed. Desiderata for knowledge-based induction programs are given, and an example of such a program in the context learning classifications is discussed. The induction program RL4 is used as an induction tool, and several examples of its past and present uses are presented. The power of the tool comes from its flexibility and ease of use with a performance system. The use of RL4 with an inference engine that uses user-defined or default evidence gathering strategies is also discussed. Finally, the directions in which RL4 can go in the future are considered.<>
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