BRAIN. Broad Research in Artificial Intelligence and Neuroscience
CoopRA Algorithm for Universal Characterization of the Experimental Evaluation Results of Cooperative Multiagent Systems
Published September 1, 2018
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Cite
Laszlo Barna Iantovics -
Petru Maior University, Targu Mures (RO),
Muaz A. Niazi -
COMSATS Institute of Information Technology, Islamabad (PK),
Adrian Gligor -
Petru Maior University, Targu Mures (RO),
Sandor Miklos Szilagyi -
Petru Maior University, Targu Mures (RO),
Matthias Dehmer -
University of Applied Sciences Upper Austria (AT),
Frank Emmert-Streib -
Tampere University of Technology, Tampere (FI),
Daniel Tokody -
Óbuda University, Budapest (HU),
Abstract
Experimental evaluation of the cooperative multiagent systems (CMASs) provides an assessment way that should be analysed. In this paper, we propose an algorithm with acronym CoopRA that can make a deep performance characterization, based on different indicators, of the experimental evaluation results of a CMAS. This could lead to the formulation of helpful information in some decisions related to the performance of the studied CMASs. In order to validate the proposed algorithm, we performed a case study on a CMAS composed of simple reactive agents that operate by mimicking the problem/task solving of natural ants. We chose this type of cooperative multiagent system architecture, based on the fact that even in case of the cooperative multiagent systems composed of simple efficiently and flexibly cooperating agents could emerges an increased problem solving intelligence at the system’s level. The evaluation was performed for the Travelling Salesman Problem (TSP) solving that is a well-known NP-hard problem, having many real-life applications.
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