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Motivation Learning in Mind Model CAM

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ABSTRACT
Motivation learning aims to create abstract motivations and related goals. It is one of the high-level cognitive functions in Consciousness And Memory model (CAM). This paper proposes a new motivation learning algorithm which allows an agent to create motivations or goals based on introspective process. The simulation of cyborg rat maze search shows that the motivation learning algorithm can adapt agents’ behavior in response to dynamic environment.
 
Cite this paper
Shi, Z. , Ma, G. , Yang, X. and Lu, C. (2015) Motivation Learning in Mind Model CAM. International Journal of Intelligence Science, 5, 63-71. doi: 10.4236/ijis.2015.52006.
 
References
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