Explainability for Human-Robot Collaboration
ACM/IEEE International Conference on Human-Robot Interaction, 2024
ACM/IEEE International Conference on Human-Robot Interaction, 2024
In human-robot collaboration, explainability bridges the communication gap between complex machine functionalities and humans. An active area of investigation in robotics and AI is understanding and generating explanations that can enhance collaboration and mutual understanding between humans and machines.
A key to achieving such seamless collaborations is understanding end-users, whether naive or expert, and tailoring explanation features that are intuitive, user-centred, and contextually relevant.
Advancing on the topic not only includes modelling humans' expectations for generating the explanations but also requires the development of metrics to evaluate generated explanations and assess how effectively autonomous systems communicate their intentions, actions, and decision-making rationale.
This workshop is designed to tackle the nuanced role of explainability in enhancing the efficiency, safety, and trust in human-robot collaboration.
It aims to initiate discussions on the importance of generating and evaluating explainability features developed in autonomous agents. Simultaneously, it addresses various challenges, including bias in explainability and downsides of explainability and deception in human-robot interaction.
Schedule
09:00 - 09:05 Welcome and introduction to the workshop
09:05 - 09:20 Ice-breaking activity
09:20 - 09:50 Keynote: Tathagata Chakraborti (IBM AI) - Explanations when there is no solution
09:50 - 10:05 Lightening talks
Hierarchical Multi-Agent Reinforcement Learning with Explainable Decision Support for Human-Robot Teams
Aaquib Tabrez, Matthew Luebbers, Kyler Ruvane, Ashley Rabin, Kevin King, William Gerichs and Bradley Hayes
Leveraging Counterfactual Paths for Contrastive Explanations of POMDP Policies
Benjamin Kraske, Zakariya Laouar and Zachary Sunberg
10:05 - 10:30 Coffee
10:30 - 11:00 Keynote: Sonia Chernova (Georgia Tech) - Toward Concept-Based Explanations for Robotic Systems
11:00 - 11:20 Lightening talks
Modeling Human Learning of Demonstration-Based Explanations for User-Centric Explainable AI
Suresh Kumaar Jayaraman, Reid Simmons, Aaron Steinfeld and Henny Admoni
Participatory Design for Explainable Robots
Ferran Gebellí Guinjoan, Raquel Ros and Anaís Garrell Zulueta
Explicable and Explainable Robot Sampling Suggestions: A Field Demonstration with an Expert Geoscientist
Deanna Flynn, Shipeng Liu, Feifei Qian and Cristina G. Wilson
11:20 - 12:50 Inverse brainstorming
12:50 - 13:00 Concluding remarks
Organizers
https://sites.google.com/view/robonarratives