Though technical advance of artificial intelligence and machine learning has enabled many promising intelligent systems, many computing tasks are still not able to be fully accomplished by machine intelligence. Motivated by the complementary nature of human and machine intelligence, an emerging trend is to involve humans in the loop of machine learning and decision-making. In this paper, we provide a macro-micro review of human-in-the-loop machine learning. We first describe major machine learning challenges which can be addressed by human intervention in the loop. Then we examine closely the latest research and findings of introducing humans into each step of the lifecycle of machine learning. Finally, we analyze current research gaps and point out future research directions.
翻译:尽管人工智能和机器学习的技术进步使许多有希望的智能系统得以实现,但许多计算任务仍无法通过机器智能完全完成。受人和机器智能互补性质的影响,一个正在出现的趋势是让人类参与机器学习和决策的循环。在本文件中,我们提供了对人与人之间操作机器学习的宏观微观审查。我们首先描述了可以通过人类参与循环解决的机器学习重大挑战。然后我们仔细研究将人类引入机器学习生命周期的每一步的最新研究和发现。最后,我们分析了目前的研究差距,指出了未来的研究方向。