Title of article :
Law, learning and representation Original Research Article
Author/Authors :
Kevin D. Ashley، نويسنده , , Edwina L. Rissland، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
42
From page :
17
To page :
58
Abstract :
In machine learning terms, reasoning in legal cases can be compared to a lazy learning approach in which courts defer deciding how to generalize beyond the prior cases until the facts of a new case are observed. The HYPO family of systems implements a “lazy” approach since they defer making arguments how to decide a problem until the programs have positioned a new problem with respect to similar past cases. In a kind of “reflective adjustment”, they fit the new problem into a patchwork of past case decisions, comparing cases in order to reason about the legal significance of the relevant similarities and differences. Empirical evidence from diverse experiments shows that for purposes of teaching legal argumentation and performing legal information retrieval, HYPO-style systemsʹ lazy learning approach and implementation of aspects of reflective adjustment can be very effective.
Keywords :
Lazy learning , Legal reasoning , Legal knowledge representation , Legal information retrieval , Version spaces , Reflective adjustment , argument , Case-based reasoning
Journal title :
Artificial Intelligence
Serial Year :
2003
Journal title :
Artificial Intelligence
Record number :
1207304
Link To Document :
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