Reflective Introspective Reasoning Through CBR

نویسنده

  • Susan Eileen Fox
چکیده

In recent years, “introspective reasoning” systems have been developed to model the ability to reason about one’s own reasoning performance. This research examines “reflective” introspective reasoning: introspecting about the introspective reasoning process, itself. We introduce a reflective introspective reasoning system that uses case-based reasoning (CBR) as its central reasoning method. We examine the advantages of such a system, and attempt to classify the reasoning failures within introspective system that indicate a need to reflect higher.

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تاریخ انتشار 2015