Embodied AI agents continue to become more capable every year with the advent of new models, environments, and benchmarks, but are still far away from being performant and reliable enough to be deployed in real, user-facing, applications. In this paper, we ask: can we bridge this gap by enabling agents to ask for assistance from an expert such as a human being? To this end, we propose the Ask4Help policy that augments agents with the ability to request, and then use expert assistance. Ask4Help policies can be efficiently trained without modifying the original agent's parameters and learn a desirable trade-off between task performance and the amount of requested help, thereby reducing the cost of querying the expert. We evaluate Ask4Help on two different tasks -- object goal navigation and room rearrangement and see substantial improvements in performance using minimal help. On object navigation, an agent that achieves a $52\%$ success rate is raised to $86\%$ with $13\%$ help and for rearrangement, the state-of-the-art model with a $7\%$ success rate is dramatically improved to $90.4\%$ using $39\%$ help. Human trials with Ask4Help demonstrate the efficacy of our approach in practical scenarios. We release the code for Ask4Help here: https://github.com/allenai/ask4help.
翻译:随着新模式、环境和基准的出现,AID代理机构的能力继续逐年提高,但是仍然远远没有提高,而且不够可靠,无法在真正的用户版应用程序中部署。在本文中,我们问:我们能否弥补这一差距,使代理机构能够向诸如人这样的专家请求协助?为此,我们提议了“Ask4Help”政策,使代理机构能够提出请求,然后使用专家援助。“Ask4Help”政策可以有效培训,而不必修改原始代理机构的参数,并学习任务性能与所请求的帮助数量之间的适当平衡,从而降低咨询专家的费用。我们评估了“Ask4Help”两个不同任务 -- -- 目标导航和房间重新布局,并看到利用最低限度的帮助大大改进了业绩。在目标导航方面,一个达到52美元成功率的代理机构,在13美元的帮助下提高到了86美元,在重新布局上,一个7美元的成功率州-艺术模式,在使用39美元/%美元帮助的情况下,大大改进了工作绩效,从而降低了成本。“Hiska4”人类检验/Askmaselviewsma 。