Case-based problem-solving systems reason and learn from experiences, building up case libraries of problems and solutions to guide future reasoning. The expected bene ts of this learning process depend on two types of regularity: 1 problem-solution regularity, the relationship between problem-to-problemand solution-to-solution similarity measures that assures that solutions to similar prior problems are a useful starting point for solving similar current problems, and 2 problemdistribution regularity, the relationship between old and new problems that assures that the case library will contain cases similar to the new problems it encounters. Unfortunately, these types of regularity are not assured. Even in contexts for which initial regularity is su cient, problems may arise if a system's users, tasks, or external environment change over time. This paper de nes criteria for assessing the two types of regularity, discusses how the de nitions may be used to assess the need for ...
David B. Leake, David C. Wilson