Feeling Optimistic? Ambiguity Attitudes for Online Decision Making
Due to the complexity of many decision making problems, tree search algorithms often have inadequate information to produce accurate transition models. This results in ambiguities (uncertainties for which there are multiple plausible models). Faced with ambiguities, robust methods have been used to...
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Zusammenfassung: | Due to the complexity of many decision making problems, tree search
algorithms often have inadequate information to produce accurate transition
models. This results in ambiguities (uncertainties for which there are multiple
plausible models). Faced with ambiguities, robust methods have been used to
produce safe solutions--often by maximizing the lower bound over the set of
plausible transition models. However, they often overlook how much the
representation of uncertainty can impact how a decision is made. This work
introduces the Ambiguity Attitude Graph Search (AAGS), advocating for more
comprehensive representations of ambiguities in decision making. Additionally,
AAGS allows users to adjust their ambiguity attitude (or preference), promoting
exploration and improving users' ability to control how an agent should respond
when faced with a set of plausible alternatives. Simulation in a dynamic
sailing environment shows how environments with high entropy transition models
can lead robust methods to fail. Results further demonstrate how adjusting
ambiguity attitudes better fulfills objectives while mitigating this failure
mode of robust approaches. Because this approach is a generalization of the
robust framework, these results further demonstrate how algorithms focused on
ambiguity have applicability beyond safety-critical systems. |
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DOI: | 10.48550/arxiv.2303.04225 |