Abstract
Self-aware individuals are more likely to consider whether their actions are appropriate in terms of public self-consciousness, and to use that information to execute behaviors that match external standards and/or expectations. The learning concepts through which individuals monitor themselves have generally been overlooked by artificial intelligence researchers. Here we report on our attempt to integrate a self-awareness mechanism into an agent’s learning architecture. Specifically, we describe (a) our proposal for a self-aware agent model that includes an external learning mechanism and internal cognitive capacity with super-ego and ego characteristics; and (b) our application of a version of the iterated prisoner’s dilemma representing conflicts between the public good and private interests to analyze the effects of self-awareness on an agent’s individual performance and cooperative behavior. Our results indicate that self-aware agents who consider public self-consciousness utilize rational analysis in a manner that promotes cooperative behavior and supports faster societal movement toward stability. We found that a small number of self-aware agents are sufficient for improving social benefits and resolving problems associated with collective irrational behaviors.
Original language | English |
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Pages (from-to) | 600-615 |
Number of pages | 16 |
Journal | Simulation |
Volume | 87 |
Issue number | 7 |
DOIs | |
State | Published - 07 2011 |
Keywords
- cellular automata
- lose-shift strategy
- public self-consciousness
- self-aware agents
- small-world networks
- tit-for-tat strategy
- win-stay