论文标题
迈向以人为本的机器学习的实践
Towards Practices for Human-Centered Machine Learning
论文作者
论文摘要
“以人为本的机器学习”(HCML)是一个术语,描述了适用于以人为中心的问题的机器学习。尽管这个想法值得注意并引起学术兴奋,但学者和从业者一直在努力清楚地定义和实施计算机科学中的HCML。本文提出了以人为中心的机器学习的实践,该领域的社会,文化和道德意义研究和设计与ML的技术进步一样重要。这些实践在HCI,AI和社会技术领域的跨学科观点以及对这个新领域的持续论述之间桥梁。这五种实践包括确保HCML是解决问题的适当解决方案空间;将问题语句概念化为位置语句;超越相互作用模型来定义人类;合法化领域的贡献;并预期社会技术失败。我的结论是建议如何在研究和实践中实施这些实践。
"Human-centered machine learning" (HCML) is a term that describes machine learning that applies to human-focused problems. Although this idea is noteworthy and generates scholarly excitement, scholars and practitioners have struggled to clearly define and implement HCML in computer science. This article proposes practices for human-centered machine learning, an area where studying and designing for social, cultural, and ethical implications are just as important as technical advances in ML. These practices bridge between interdisciplinary perspectives of HCI, AI, and sociotechnical fields, as well as ongoing discourse on this new area. The five practices include ensuring HCML is the appropriate solution space for a problem; conceptualizing problem statements as position statements; moving beyond interaction models to define the human; legitimizing domain contributions; and anticipating sociotechnical failure. I conclude by suggesting how these practices might be implemented in research and practice.