Keiki Takadama, Yutaka L. Suematsu, Norikazu Sugimoto, Norberto E. Nawa and Katsunori Shimohara (2003)
Cross-Element Validation in Multiagent-based Simulation: Switching Learning Mechanisms in Agents
Journal of Artificial Societies and Social Simulation
vol. 6, no. 4
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Received: 13-Jul-2003 Accepted: 13-Jul-2003 Published: 31-Oct-2003
Figure 1. ES- and LCS-based agents
Figure 2. Example of a negotiation process (ES- and LCS-based agents)
Figure 3. RL-based agents
Figure 4. Example of a negotiation process (RL-based agents)
Q(t,o)=Q(t,o)+&alpha[r+&gamma maxo'&isin O(t') Q(t',o')-Q(t,o)]   ....   (1)
Table 1. Parameters in simulations
Figure 5. Simulation results of ES vs. LCS:
Average values over 10 runs at 5000 iterations
Figure 6. Simulation results of ES with one decimal digit vs. RL:
Average values over 10 runs at 5000 iterations
Figure 7. Three approaches to the validity of simulation results
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