Deep learning (DL) has gained much attention and become increasingly popular in modern data science. Computer scientists led the way in developing deep learning techniques, so the ideas and perspectives can seem alien to statisticians. Nonetheless, it is important that statisticians become involved -- many of our students need this expertise for their careers. In this paper, developed as part of a program on DL held at the Statistical and Applied Mathematical Sciences Institute, we address this culture gap and provide tips on how to teach deep learning to statistics graduate students. After some background, we list ways in which DL and statistical perspectives differ, provide a recommended syllabus that evolved from teaching two iterations of a DL graduate course, offer examples of suggested homework assignments, give an annotated list of teaching resources, and discuss DL in the context of two research areas.
翻译:深入学习(DL)在现代数据科学中引起了人们的极大关注,并越来越受欢迎。计算机科学家带头开发深层次学习技术,这样,这些想法和观点对统计人员来说就显得不相干。然而,统计人员必须参与其中 -- -- 我们许多学生的职业生涯需要这种专门知识。本文是统计和应用数学研究所举办的关于DL的方案的一部分,我们探讨了这一文化差距,并就如何向统计研究生教授深层次学习提供了指导。我们从某些背景中列举了DL和统计观点不同的方式,提供了从教授DL研究生课程的两个迭代中演变而来的建议大纲,提供了建议做家庭作业的例子,提供了附加说明的教学资源清单,并在两个研究领域讨论了DL。