Search Results for author: Kayla Boggess

Found 5 papers, 2 papers with code

Explainable Multi-Agent Reinforcement Learning for Temporal Queries

1 code implementation17 May 2023 Kayla Boggess, Sarit Kraus, Lu Feng

As multi-agent reinforcement learning (MARL) systems are increasingly deployed throughout society, it is imperative yet challenging for users to understand the emergent behaviors of MARL agents in complex environments.

Multi-agent Reinforcement Learning reinforcement-learning

Toward Policy Explanations for Multi-Agent Reinforcement Learning

1 code implementation26 Apr 2022 Kayla Boggess, Sarit Kraus, Lu Feng

Advances in multi-agent reinforcement learning (MARL) enable sequential decision making for a range of exciting multi-agent applications such as cooperative AI and autonomous driving.

Autonomous Driving Decision Making +3

Multi-Objective Controller Synthesis with Uncertain Human Preferences

no code implementations10 May 2021 Shenghui Chen, Kayla Boggess, David Parker, Lu Feng

Complex real-world applications of cyber-physical systems give rise to the need for multi-objective controller synthesis, which concerns the problem of computing an optimal controller subject to multiple (possibly conflicting) criteria.

Towards Personalized Explanation of Robot Path Planning via User Feedback

no code implementations1 Nov 2020 Kayla Boggess, Shenghui Chen, Lu Feng

Prior studies have found that explaining robot decisions and actions helps to increase system transparency, improve user understanding, and enable effective human-robot collaboration.

Question Answering Specificity

Towards Transparent Robotic Planning via Contrastive Explanations

no code implementations16 Mar 2020 Shenghui Chen, Kayla Boggess, Lu Feng

Providing explanations of chosen robotic actions can help to increase the transparency of robotic planning and improve users' trust.

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