Similarity-based transfer learning of decision policies

06/12/2020
by   Eliška Zugarová, et al.
0

A problem of learning decision policy from past experience is considered. Using the Fully Probabilistic Design (FPD) formalism, we propose a new general approach for finding a stochastic policy from the past data.

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