Litcius/Paper detail

Program Guided Agent

Shaohua Sun, Te-Lin Wu, Joseph J. Lim

2020International Conference on Learning Representations14 citations

Abstract

Developing agents that can learn to follow natural language instructions has been an emerging research direction. While being accessible and flexible, natural language instructions can sometimes be ambiguous even to humans. To address this, we propose to utilize programs, structured in a formal language, as a precise and expressive way to specify tasks. We then devise a modular framework that learns to perform a task specified by a program – as different circumstances give rise to diverse ways to accomplish the task, our framework can perceive which circumstance it is currently under, and instruct a multitask policy accordingly to fulfill each subtask of the overall task. Experimental results on a 2D Minecraft environment not only demonstrate that the proposed framework learns to reliably accomplish program instructions and achieves zero-shot generalization to more complex instructions but also verify the efficiency of the proposed modulation mechanism for learning the multitask policy. We also conduct an analysis comparing various models which learn from programs and natural language instructions in an end-to-end fashion.

Topics & Concepts

Computer scienceTask (project management)GeneralizationModular designNatural languageNatural language understandingArtificial intelligenceHuman–computer interactionNatural (archaeology)Task analysisNatural language processingProgramming languageEconomicsMathematical analysisMathematicsArchaeologyHistoryManagementTopic ModelingMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot Learning