首页 /研究 /Training Agents With Interactive Reinforcement Learning and Contextual Affordances
LEARNING

Training Agents With Interactive Reinforcement Learning and Contextual Affordances

Francisco Cruz, Sven Magg, Cornelius Weber, Stefan Wermter

发表年份
2016
引用次数
91

摘要

In the future, robots will be used more extensively as assistants in home scenarios and must be able to acquire expertise from trainers by learning through crossmodal interaction. One promising approach is interactive reinforcement learning (IRL) where an external trainer advises an apprentice on actions to speed up the learning process. In this paper we present an IRL approach for the domestic task of cleaning a table and compare three different learning methods using simulated robots: 1) reinforcement learning (RL); 2) RL with contextual affordances to avoid failed states; and 3) the previously trained robot serving as a trainer to a second apprentice robot. We then demonstrate that the use of IRL leads to different performance with various levels of interaction and consistency of feedback. Our results show that the simulated robot completes the task with RL, although working slowly and with a low rate of success. With RL and contextual affordances fewer actions are needed and can reach higher rates of success. For good performance with IRL it is essential to consider the level of consistency of feedback since inconsistencies can cause considerable delay in the learning process. In general, we demonstrate that interactive feedback provides an advantage for the robot in most of the learning cases.

关键词

Computer scienceAffordanceReinforcement learningTrainerHuman–computer interactionRobotTask (project management)Consistency (knowledge bases)Process (computing)Robot learning

相关论文

查看 LEARNING 分类全部论文