Litcius/Paper detail

Skill Induction and Planning with Latent Language

Pratyusha Sharma, Antonio Torralba, Jacob Andreas

2022Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)34 citationsDOIOpen Access PDF

Abstract

We present a framework for learning hierarchical policies from demonstrations, using sparse natural language annotations to guide the discovery of reusable skills for autonomous decision-making. We formulate a generative model of action sequences in which goals generate sequences of high-level subtask descriptions, and these descriptions generate sequences of low-level actions. We describe how to train this model using primarily unannotated demonstrations by parsing demonstrations into sequences of named high-level subtasks, using only a small number of seed annotations to ground language in action. In trained models, natural language commands index a combinatorial library of skills; agents can use these skills to plan by generating high-level instruction sequences tailored to novel goals. We evaluate this approach in the ALFRED household simulation environment, providing natural language annotations for only 10% of demonstrations. It achieves task completion rates comparable to state-of-the-art models (outperforming several recent methods with access to ground-truth plans during training and evaluation) while providing structured and human-readable high-level plans. 1

Topics & Concepts

Computer scienceParsingGenerative grammarNatural languageArtificial intelligencePlan (archaeology)Language modelAction (physics)Generative modelGround truthNatural language processingMachine learningQuantum mechanicsPhysicsArchaeologyHistoryTopic ModelingReinforcement Learning in RoboticsMultimodal Machine Learning Applications
Skill Induction and Planning with Latent Language | Litcius