LGFeb 16, 2022

A data-driven approach for learning to control computers

arXiv:2202.08137v2127 citations
Originality Highly original
AI Analysis

This addresses the problem of enabling machines to assist humans in everyday computer tasks, representing a novel approach rather than incremental progress.

The researchers tackled the problem of training machines to control computers using keyboard and mouse with natural language goals, achieving state-of-the-art and human-level mean performance across all tasks in the MiniWob++ benchmark with evidence of cross-task transfer.

It would be useful for machines to use computers as humans do so that they can aid us in everyday tasks. This is a setting in which there is also the potential to leverage large-scale expert demonstrations and human judgements of interactive behaviour, which are two ingredients that have driven much recent success in AI. Here we investigate the setting of computer control using keyboard and mouse, with goals specified via natural language. Instead of focusing on hand-designed curricula and specialized action spaces, we focus on developing a scalable method centered on reinforcement learning combined with behavioural priors informed by actual human-computer interactions. We achieve state-of-the-art and human-level mean performance across all tasks within the MiniWob++ benchmark, a challenging suite of computer control problems, and find strong evidence of cross-task transfer. These results demonstrate the usefulness of a unified human-agent interface when training machines to use computers. Altogether our results suggest a formula for achieving competency beyond MiniWob++ and towards controlling computers, in general, as a human would.

Foundations

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