Title :
Evolving internal reinforcers for an intrinsically motivated reinforcement-learning robot
Author :
Schembri, Massimiliano ; Mirolli, Marco ; Baldassarre, Gianluca
Author_Institution :
Consiglio Nazionale delle Ricerche, Rome
Abstract :
Intrinsically motivated reinforcement learning (IMRL) has been proposed as a framework within which agents exploit "internal reinforcement" to acquire general-purpose building-block behaviors ("skills") which can be later combined for solving several specific tasks. The architectures so far proposed within this framework are limited in that: (1) they use hardwired "salient events" to form and train skills, and this limits agents\´ autonomy; (2) they are applicable only to problems with abstract states and actions, as grid-world problems. This paper proposes solutions to these problems in the form of a hierarchical reinforcement-learning architecture that: (1) exploits evolutionary robotics techniques so to allow the system to autonomously discover "salient events"; (2) uses neural networks so to allow the system to cope with continuous states and noisy environments. The viability of the proposed approach is demonstrated with a simulated robotic scenario.
Keywords :
genetic algorithms; intelligent robots; learning (artificial intelligence); neural nets; actor-critic neural network architecture; evolutionary robotics technique; general-purpose building-block behaviors; genetic algorithm; internal reinforcement; intrinsically motivated reinforcement-learning robot; Contracts; Erbium; Machine learning; Neural networks; Neuroscience; Organisms; Proposals; Robotic assembly; Robots; Testing; Actor-Critic; Evolutionary Robotics; Intrinsically Motivated Reinforcement Learning; Neural Networks; Surprise;
Conference_Titel :
Development and Learning, 2007. ICDL 2007. IEEE 6th International Conference on
Conference_Location :
London
Print_ISBN :
978-1-4244-1116-0
Electronic_ISBN :
978-1-4244-1116-0
DOI :
10.1109/DEVLRN.2007.4354052