Projective simulation for classical learning agents: a comprehensive investigation
Identificadores
URI: https://hdl.handle.net/10481/77989Metadatos
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Springer
Materia
Inteligencia artificial Artificial intelligence
Fecha
2014-12-01Referencia bibliográfica
Published version: Mautner, J... [et al.]. Projective Simulation for Classical Learning Agents: A Comprehensive Investigation. New Gener. Comput. 33, 69–114 (2015). [https://doi.org/10.1007/s00354-015-0102-0]
Patrocinador
Austrian Science Fund (FWF) SFB FoQuS F4012; Templeton World Charity Foundation (TWCF)Resumen
We study the model of projective simulation (PS), a novel approach to arti cial intelligence based
on stochastic processing of episodic memory which was recently introduced [1]. Here we provide a
detailed analysis of the model and examine its performance, including its achievable e ciency, its
learning times and the way both properties scale with the problems' dimension. In addition, we
situate the PS agent in di erent learning scenarios, and study its learning abilities. A variety of
new scenarios are being considered, thereby demonstrating the model's
exibility. Further more, to
put the PS scheme in context, we compare its performance with those of Q-learning and learning
classi er systems, two popular models in the eld of reinforcement learning. It is shown that PS is
a competitive arti cial intelligence model of unique properties and strengths.