A Current-Mode Analog Circuit for Reinforcement Learning Problems

New Orleans, LA(2007)

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摘要
Reinforcement learning is important for machine-intelligence and neurophysiological modelling applications to provide time-critical decision making. Analog circuit implementation has been demonstrated as a powerful computational platform for power-efficient, bio-implantable and real-time applications. This paper presents a current-mode analog circuit design for solving reinforcement learning problem with simple and efficient computational network architecture. The design has been fabricated and a new procedure to validate the fabricated reinforcement learning circuit will also be presented. This work provides a preliminary study for future biomedical application using CMOS VLSI reinforcement learning model.
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关键词
cmos integrated circuits,vlsi,analogue circuits,current-mode circuits,decision making,learning (artificial intelligence),neurophysiology,cmos vlsi,bio-implantable applications,computational network architecture,computational platform,current-mode analog circuit,machine-intelligence,neurophysiological modelling,real-time applications,reinforcement learning problems,time-critical decision making
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