Language-Guided World Models: A Model-Based Approach to AI Control

18 Sep 2024

Khanh Nguyen, CHAI Postdoctoral Fellow, published a paper at the Fourth International Combined Workshop on Spatial Language Understanding and Grounded Communication for Robotics (ACL 2024).

This paper introduces the concept of Language-Guided World Models (LWMs)—probabilistic models that can simulate environments by reading texts. Agents equipped with these models provide humans with more extensive and efficient control, allowing them to simultaneously alter agent behaviors in multiple tasks via natural verbal communication. In this work, we take initial steps in developing robust LWMs that can generalize to compositionally novel language descriptions. We define key concepts, design a challenging benchmark, and propose a novel model architecture that outperforms the state-of-the-art Transformer model.

Link to paper