Convex duality for stochastic shortest path problems in known and unknown environments
This paper studies Stochastic Shortest Path (SSP) problems in known and unknown environments from the perspective of convex optimisation. It first recalls results in the known parameter case, and develops understanding through different proofs. It then focuses on the unknown parameter case, where it...
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Zusammenfassung: | This paper studies Stochastic Shortest Path (SSP) problems in known and
unknown environments from the perspective of convex optimisation. It first
recalls results in the known parameter case, and develops understanding through
different proofs. It then focuses on the unknown parameter case, where it
studies extended value iteration (EVI) operators. This includes the existing
operators used in Rosenberg et al. [26] and Tarbouriech et al. [31] based on
the l-1 norm and supremum norm, as well as defining EVI operators corresponding
to other norms and divergences, such as the KL-divergence. This paper shows in
general how the EVI operators relate to convex programs, and the form of their
dual, where strong duality is exhibited.
This paper then focuses on whether the bounds from finite horizon research of
Neu and Pike-Burke [21] can be applied to these extended value iteration
operators in the SSP setting. It shows that similar bounds to [21] for these
operators exist, however they lead to operators that are not in general
monotone and have more complex convergence properties. In a special case we
observe oscillating behaviour. This paper generates open questions on how
research may progress, with several examples that require further examination. |
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DOI: | 10.48550/arxiv.2208.00330 |