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However, the effective utilization of case-based reasoning paradigm also presents inherent
limitations and/or drawbacks related to its knowledge representation and life cycle: ( i ) past
cases could be inexistent or difficult to represent, ( ii ) specific techniques have to be defined
from scratch for modifying previous cases or their solutions in order to adapt them to the
new situations and ( iii ) in some scenarios, it could be difficult to maintain case-base
efficiency because unused cases need to be forgotten. In such situations, specific solutions
have to be defined in order to overcome particular difficulties.
5. Acknowledgements
This work has been partially funded by the project InNoCBR (10TIC305014PR) from Xunta de
Galicia. M. Reboiro-Jato was supported by a pre-doctoral fellowship from University of Vigo.
6. References
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