高中生和大学生志愿者是机器学习地球科学研究需求的不完美解决方案

Sarah E. Esenther, Neiv Gupta, Chanatip Vongkitbuncha, Mason N. Lee, Laurence C. Smith
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摘要

机器学习革命为地球科学家带来了激动人心的研究新机遇,但却受到需要大量高质量训练数据集的限制。与此同时,本科生和研究生课程的招生竞争日益激烈,迫使高中生和本科生通过在早期阶段参与研究而脱颖而出。将这两种兴趣结合起来,可以为地球科学家和处于早期阶段的学生提供互惠互利的机会。我们介绍了我们与 20 名早期学生合作建立大型训练数据集的经验,这些数据集是从冰原融水排水模式的卫星图像中数字化而来的。本视角旨在与其他机器学习研究人员分享我们的经验和教训,这些研究人员和我们一样,可能很少有指导年轻志愿研究人员的经验,但可能会首次寻求此类合作,以满足他们的机器学习训练数据集需求。通过这些合作,我们创建了一个功能强大的新机器学习模型,如果没有这些合作,这个模型是不可能实现的。学生的收益因其承诺和主动性的不同而各异,从接触地球科学研究和简历项目,到强有力的推荐信和与精英大学实验室地球科学研究人员的持续联系,不一而足。许多学生仅仅是出于对机器学习的兴趣才被吸引到这个项目中来,因此,这个机会惠及了那些原本不会从事地球科学研究的学生。尽管如此,如果没有激励机制鼓励研究人员让弱势学生参与进来,我们的经验表明,研究人员与早期学生之间的互利合作关系可能会加剧地球科学领域的不平等和缺乏多样性问题。
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High School and Undergraduate Student Volunteers as an Imperfect Solution to Machine Learning Geoscience Research Needs
The machine learning revolution presents geoscientists with exciting new opportunities for research, but is constrained by the need for large, high quality training data sets. Simultaneously, undergraduate and graduate program admissions have become increasingly competitive, pressuring high school and undergraduate students to differentiate themselves through involvement in research at earlier stages. Aligning these two interests provides mutually beneficial opportunities for both geoscientists and early‐stage students. We describe our experiences working with 20 early‐stage students to build a large training data set digitized from satellite images of meltwater drainage patterns on ice sheets. The intent of this Perspective is to share our experience and lessons learned with other machine learning researchers who, like us, may have minimal experience mentoring young volunteer researchers but may seek such partnerships for the first time in response to their machine learning training data set needs. These partnerships enabled creation of a powerful new machine learning model that would have otherwise been infeasible. Student benefits varied with their commitment and proactiveness, ranging from exposure to geoscience research and a resume line item to strong letters of recommendation and ongoing connections with geoscience researchers at an elite university lab. Many students were attracted to the project solely out of interest in machine learning, so the opportunity reached students who would not otherwise have conducted research in geoscience. Still, without incentives for researchers to engage less‐privileged students, our experience suggests that mutually beneficial partnerships between researchers and early‐stage students may exacerbate issues of inequality and lack of diversity within the geosciences.
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