Minimal entropy production due to constraints on rate matrix
dependencies in multipartite processes
- URL: http://arxiv.org/abs/2001.02205v3
- Date: Wed, 13 May 2020 16:17:26 GMT
- Title: Minimal entropy production due to constraints on rate matrix
dependencies in multipartite processes
- Authors: David H Wolpert
- Abstract summary: I consider multipartite processes in which there are constraints on each subsystem's rate matrix.
I derive a strictly nonzero lower bound on the minimal entropy achievable production rate of the process.
- Score: 0.5874142059884521
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: I consider multipartite processes in which there are constraints on each
subsystem's rate matrix, restricting which other subsystems can directly affect
its dynamics. I derive a strictly nonzero lower bound on the minimal achievable
entropy production rate of the process in terms of these constraints on the
rate matrices of its subsystems. The bound is based on constructing
counterfactual rate matrices, in which some subsystems are held fixed while the
others are allowed to evolve. This bound is related to the "learning rate" of
stationary bipartite systems, and more generally to the "information flow" in
bipartite systems.
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