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Situational Awareness by Risk-Conscious Skills

1 Pith paper cite this work. Polarity classification is still indexing.

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abstract

Hierarchical Reinforcement Learning has been previously shown to speed up the convergence rate of RL planning algorithms as well as mitigate feature-based model misspecification (Mankowitz et. al. 2016a,b, Bacon 2015). To do so, it utilizes hierarchical abstractions, also known as skills -- a type of temporally extended action (Sutton et. al. 1999) to plan at a higher level, abstracting away from the lower-level details. We incorporate risk sensitivity, also referred to as Situational Awareness (SA), into hierarchical RL for the first time by defining and learning risk aware skills in a Probabilistic Goal Semi-Markov Decision Process (PG-SMDP). This is achieved using our novel Situational Awareness by Risk-Conscious Skills (SARiCoS) algorithm which comes with a theoretical convergence guarantee. We show in a RoboCup soccer domain that the learned risk aware skills exhibit complex human behaviors such as `time-wasting' in a soccer game. In addition, the learned risk aware skills are able to mitigate reward-based model misspecification.

fields

cs.LG 1

years

2024 1

verdicts

UNVERDICTED 1

representative citing papers

TRAM: Test-Time Risk Adaptation with Mixture of Agents

cs.LG · 2024-08-16 · unverdicted · novelty 7.0

TRAM is a test-time mixture method that scores and composes risk-neutral source policies using reward and occupancy-based risk to achieve new reward-risk tradeoffs without parameter updates.

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  • TRAM: Test-Time Risk Adaptation with Mixture of Agents cs.LG · 2024-08-16 · unverdicted · none · ref 22 · internal anchor

    TRAM is a test-time mixture method that scores and composes risk-neutral source policies using reward and occupancy-based risk to achieve new reward-risk tradeoffs without parameter updates.