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ICCBR
2005
Springer

Evaluating the Effectiveness of Exploration and Accumulated Experience in Automatic Case Elicitation

13 years 10 months ago
Evaluating the Effectiveness of Exploration and Accumulated Experience in Automatic Case Elicitation
Non-learning problem solvers have been applied to many interesting and complex domains. Experience-based learning techniques have been developed to augment the capabilities of certain non-learning problem solvers in order to improve overall performance. An alternative approach to enhancing preexisting systems is automatic case elicitation, a learning technique in which a case-based reasoning system with no prior domain knowledge acquires knowledge automatically through real-time exploration and interaction with its environment. In empirical testing in the domain of checkers, results suggest not only that experience can substitute for the inclusion of pre-coded model-based knowledge, but also that the ability to explore is crucial to the performance of automatic case elicitation.
Jay H. Powell, Brandon M. Hauff, John D. Hastings
Added 27 Jun 2010
Updated 27 Jun 2010
Type Conference
Year 2005
Where ICCBR
Authors Jay H. Powell, Brandon M. Hauff, John D. Hastings
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