In this position paper, we argue that application-driven research has been systemically under-valued in the machine learning community. As applications of machine learning proliferate, innovative algorithms inspired by specific real-world challenges have become increasingly important. Such work offers the potential for significant impact not merely in domains of application but also in machine learning itself. In this paper, we describe the paradigm of application-driven research in machine learning, contrasting it with the more standard paradigm of methods-driven research. We illustrate the benefits of application-driven machine learning and how this approach can productively synergize with methods-driven work. Despite these benefits, we find that reviewing, hiring, and teaching practices in machine learning often hold back application-driven innovation. We outline how these processes may be improved.
翻译:在这篇立场论文中,我们主张应用驱动的研究在机器学习领域长期被系统性低估。随着机器学习应用的激增,受特定现实世界挑战启发的创新算法正变得日益重要。此类工作不仅在其应用领域具有产生重大影响的潜力,对机器学习学科本身亦能带来重要贡献。本文阐述了机器学习中应用驱动研究的范式,并将其与更常见的方法驱动研究范式进行对比。我们通过实例说明应用驱动机器学习的优势,以及该方法如何与方法驱动工作产生建设性协同效应。尽管存在这些优势,我们发现机器学习领域的论文评审、人才聘用和教学实践往往阻碍着应用驱动的创新。本文最后就如何改进这些流程提出了建议。