Explaining predictions from Bayesian networks, for example to physicians, is non-trivial. Various explanation methods for Bayesian network inference have appeared in literature, focusing on different aspects of the underlying reasoning. While there has been a lot of technical research, there is very little known about how well humans actually understand these explanations. In this paper, we present ongoing research in which four different explanation approaches were compared through a survey by asking a group of human participants to interpret the explanations.
翻译:对巴耶斯网络的预测,例如向医生解释,是非三重性的。在文献中出现了对巴耶斯网络推论的各种解释方法,侧重于基本推理的不同方面。虽然已经进行了大量的技术研究,但对于人类如何真正理解这些解释却知之甚少。在本文中,我们通过调查比较了四种不同的解释方法,要求一组人类参与者解释解释这些解释。