Recent work in machine learning and cognitive science has suggested that understanding causal information is essential to the development of intelligence. The extensive literature in cognitive science using the ``blicket detector'' environment shows that children are adept at many kinds of causal inference and learning. We propose to adapt that environment for machine learning agents. One of the key challenges for current machine learning algorithms is modeling and understanding causal overhypotheses: transferable abstract hypotheses about sets of causal relationships. In contrast, even young children spontaneously learn and use causal overhypotheses. In this work, we present a new benchmark -- a flexible environment which allows for the evaluation of existing techniques under variable causal overhypotheses -- and demonstrate that many existing state-of-the-art methods have trouble generalizing in this environment. The code and resources for this benchmark are available at https://github.com/CannyLab/casual_overhypotheses.
翻译:最近在机器学习和认知科学方面的工作表明,理解因果信息对于情报的发展至关重要。使用“blicket探测器”环境的认知科学的广泛文献表明,儿童能够适应多种因果推断和学习。我们提议为机器学习代理人调整这种环境。当前机器学习算法的主要挑战之一是建模和理解因果超理:关于因果关系组合的可转移抽象假设。相比之下,即使是幼儿也自发学习和使用因果超理。在这个工作中,我们提出了一个新的基准 -- -- 一种灵活的环境,允许在可变因果超理假设下评估现有技术 -- -- 并表明许多现有最先进的方法在这个环境中难以概括。这一基准的代码和资源可以在https://github.com/CannyLab/casaual_overhypothews查阅。