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  4. Two-agent case-based reasoning for prediction
 
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Two-agent case-based reasoning for prediction

Publikationstyp
Conference Paper
Date Issued
2025-06
Sprache
English
Author(s)
Murena, Pierre-Alexandre  
Human-centric Machine Learning E-EXK7  
TORE-URI
https://hdl.handle.net/11420/56865
First published in
Lecture notes in computer science  
Number in series
15662 LNAI
Start Page
267
End Page
281
Citation
33rd International Conference on Case-Based Reasoning Research and Development, ICCBR 2025
Contribution to Conference
33rd International Conference on Case-Based Reasoning Research and Development, ICCBR 2025  
Publisher DOI
10.1007/978-3-031-96559-3_18
Scopus ID
2-s2.0-105010824797
Publisher
Springer
ISBN
978-3-031-96559-3
978-3-031-96558-6
978-3-031-96560-9
Decision-making and prediction using Case-Based Reasoning involve two sequential steps: retrieval, where similar cases are selected, and adaptation, where these retrieved cases are used to infer a solution to the target problem. Traditionally, both steps are performed by a single agent, and prior research has emphasized the importance of adaptation-guided retrieval, i.e. considering the adaptation method when conducting retrieval. This paper explores an alternative setting, in which retrieval and adaptation are carried out by two distinct agents. A particularly relevant scenario arises when retrieval is performed by an AI agent, while adaptation is handled by a human. Since adaptation is conduced externally, adaptation-guided retrieval is only feasible if there is a model of how adaptation is performed. Two scenarios are examined: (1) when the retrieval agent knows the target solution and seeks to guide the adaptation toward it, and (2) when the retrieval agent does not have access to the target solution. Our approach is evaluated with a series of experiments on both a symbolic and a numerical task, using models of varying complexity. The results highlight the importance of inferring a correct model of the adaptation.
Subjects
Adaptation-guided Retrieval | Multi-agent | User modeling
DDC Class
600: Technology
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