Abstract
The similarity assumption in Case-Based Reasoning (similar
problems have similar solutions) has been questioned by
several researchers. If knowledge about the adaptability of
solutions is available, it can be exploited in order to guide
retrieval. Several approaches have been proposed in this context,
often assuming a similarity or cost measure defined over
the solution space. In this paper, we propose a novel approach
where the adaptability of the solutions is captured inside a
metric Markov Random Field (MRF). Each case is represented
as a node in the MRF, and edges connect cases whose
solutions are close in the solution space. States of the nodes
represent the adaptability effort with respect to the query. Potentals
are defined to enforce connected nodes to share the
same state; this models the fact that cases having similar solutions
should have the same adaptability effort with respect
to the query. The main goal is to enlarge the set of potentially
adaptable cases that are retrieved (the recall) without significantly
sacrificing the precision of retrieval. We will report on
some experiments concerning a retrieval architecture where
a simple kNN retrieval is followed by a further retrieval step
based on MRF inference.
Lingua originale | Inglese |
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Pagine | 347-352 |
Numero di pagine | 6 |
Stato di pubblicazione | Pubblicato - 2019 |
Evento | Thirty-Second International Florida Artificial Intelligence Research Society Conference (FLAIRS-32) - Sarasota, FL (USA) Durata: 1 gen 2019 → … |
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???event.eventtypes.event.conference??? | Thirty-Second International Florida Artificial Intelligence Research Society Conference (FLAIRS-32) |
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Città | Sarasota, FL (USA) |
Periodo | 1/01/19 → … |
Keywords
- Case-Based Reasoning
- Adaptation Guided Retrieval
- Markov Random Fields