Wednesday, 3 January 2018

Characterizing optimal hierarchical policy inference on graphs via non-equilibrium thermodynamics. (arXiv:1801.00048v1 [cs.SY])

Hierarchies are of fundamental interest in both stochastic optimal control and biological control due to their facilitation of a range of desirable computational traits in a control algorithm and the possibility that they may form a core principle of sensorimotor and cognitive control systems. However, a theoretically justified construction of state-space hierarchies over all spatial resolutions and their evolution through a policy inference process remains elusive. Here, a formalism for deriving such normative representations of discrete Markov decision processes is introduced in the context of graphs. The resulting hierarchies correspond to a hierarchical policy inference algorithm approximating a discrete gradient flow between state-space trajectory densities generated by the prior and optimal policies.



from cs updates on arXiv.org http://ift.tt/2lLPRYu
//

Related Posts:

0 comments:

Post a Comment