Litcius/Paper detail

Learning to reason over scene graphs: a case study of finetuning GPT-2 into a robot language model for grounded task planning

Georgia Chalvatzaki, Ali Younes, Daljeet Nandha, An T. Le, Leonardo F. R. Ribeiro, Iryna Gurevych

2023Frontiers in Robotics and AI27 citationsDOIOpen Access PDF

Abstract

Long-horizon task planning is essential for the development of intelligent assistive and service robots. In this work, we investigate the applicability of a smaller class of large language models (LLMs), specifically GPT-2, in robotic task planning by learning to decompose tasks into subgoal specifications for a planner to execute sequentially. Our method grounds the input of the LLM on the domain that is represented as a scene graph, enabling it to translate human requests into executable robot plans, thereby learning to reason over long-horizon tasks, as encountered in the ALFRED benchmark. We compare our approach with classical planning and baseline methods to examine the applicability and generalizability of LLM-based planners. Our findings suggest that the knowledge stored in an LLM can be effectively grounded to perform long-horizon task planning, demonstrating the promising potential for the future application of neuro-symbolic planning methods in robotics.

Topics & Concepts

Computer scienceExecutableArtificial intelligencePlannerRobotTask (project management)Automated planning and schedulingHuman–computer interactionRoboticsMachine learningBenchmark (surveying)Programming languageSystems engineeringGeographyEngineeringGeodesyTopic ModelingAI-based Problem Solving and PlanningNatural Language Processing Techniques