Explaining Reinforcement Learning to Mere Mortals: An Empirical Study
Anderson, Andrew, Dodge, Jonathan, Sadarangani, Amrita, Juozapaitis, Zoe, Newman, Evan, Irvine, Jed, Chattopadhyay, Souti, Fern, Alan, Burnett, Margaret
–arXiv.org Artificial Intelligence
We present a user study to investigate the impact of explanations on non-experts' understanding of reinforcement learning (RL) agents. We investigate both a common RL visualization, saliency maps (the focus of attention), and a more recent explanation type, reward-decomposition bars (predictions of future types of rewards). We designed a 124 participant, four-treatment experiment to compare participants' mental models of an RL agent in a simple Real-Time Strategy (RTS) game. Our results show that the combination of both saliency and reward bars were needed to achieve a statistically significant improvement in mental model score over the control. In addition, our qualitative analysis of the data reveals a number of effects for further study.
arXiv.org Artificial Intelligence
Mar-22-2019
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- Europe > Italy
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