@inbook {IIIA-1997-272, title = {Cooperative Case-Based Reasoning}, booktitle = {Artificial Intelligence Meets Machine Learning. Lecture Notes in Artificial Intelligence}, volume = {1221}, year = {1997}, pages = {180-201}, publisher = {Spriger-Verlag}, organization = {Spriger-Verlag}, abstract = {We are investigating possible modes of cooperation among homogeneous agents with learning capabilities. In this paper we will be focused on agents that learn and solve problems using Case-based Reasoning (CBR), and we will present two modes of cooperation among them: Distributed Case-based Reasoning (DistCBR) and Collective Case-based Reasoning (ColCBR). We illustrate these modes with an application where different CBR agents able to recommend chromatography techniques for protein purification cooperate. The approach taken is to extend Noos, the representation language being used by the CBR agents. Noos is knowledge modeling framework designed to integrate learning methods and based on the task/method decomposition principle. The extension we present, Plural Noos, allows communication and cooperation among agents implemented in Noos by means of three basic constructs: alien references, foreign method evaluation, and mobile methods.}, author = {Enric Plaza and Josep Lluis Arcos and Francisco Martin}, editor = {Gerhard Weis} }