Computational Skills by Stealth in Secondary School Data Science

The unprecedented growth in the availability of data of all types and qualities and the emergence of the field of data science has provided an impetus to finally realizing the implementation of the full breadth of the Nolan and Temple Lang proposed integration of computing concepts into statistics curricula at all levels in statistics and new data science programs and courses. Moreover, data science, implemented carefully, opens accessible pathways to stem for students for whom neither mathematics nor computer science are natural affinities, and who would traditionally be excluded. We discuss a proposal for the stealth development of computational skills in students' first exposure to data science through careful, scaffolded exposure to computation and its power. The intent of this approach is to support students, regardless of interest and self-efficacy in coding, in becoming data-driven learners, who are capable of asking complex questions about the world around them, and then answering those questions through the use of data-driven inquiry. This discussion is presented in the context of the International Data Science in Schools Project which recently published computer science and statistics consensus curriculum frameworks for a two-year secondary school data science program, designed to make data science accessible to all.

[1]  Robert Lue,et al.  Data Science as a Foundation for Inclusive Learning , 2019, 1.2.

[2]  Silke Luttenberger,et al.  Spotlight on math anxiety , 2018, Psychology research and behavior management.

[3]  C. Primi THE ROLE OF MATHEMATICS ANXIETY AND STATISTICS ANXIETY IN LEARNING STATISTICS , 2018 .

[4]  Andrew Gunn Embedding quantitative methods by stealth in political science , 2017 .

[5]  Daniel T. Kaplan,et al.  The mosaic Package: Helping Students to Think with Data Using R , 2017, R J..

[6]  Hadley Wickham,et al.  R for Data Science: Import, Tidy, Transform, Visualize, and Model Data , 2014 .

[7]  Tim Downie,et al.  Using the R Commander: A Point-and-Click Interface for R , 2016 .

[8]  Andee Kaplan,et al.  Designing Modular Software: A Case Study in Introductory Statistics , 2016, 1608.02533.

[9]  J. Fox Using the R Commander: A Point-and-Click Interface for R , 2016 .

[10]  et al.,et al.  Jupyter Notebooks - a publishing format for reproducible computational workflows , 2016, ELPUB.

[11]  Philip E. Bourne,et al.  Let's Make Gender Diversity in Data Science a Priority Right from the Start , 2015, PLoS biology.

[12]  R Core Team,et al.  R: A language and environment for statistical computing. , 2014 .

[13]  Massood Towhidnejad,et al.  Work in progress: Teaching computational thinking in middle and high school , 2012, 2012 Frontiers in Education Conference Proceedings.

[14]  L. Sharp Stealth Learning: Unexpected Learning Opportunities Through Games , 2012 .

[15]  Deborah Nolan,et al.  Computing in the Statistics Curricula , 2010 .

[16]  Marsha C. Lovett,et al.  How learning works , 2010 .

[17]  Christopher Rao,et al.  Graphs in Statistical Analysis , 2010 .

[18]  Eamonn Murphy,et al.  Programming Anxiety Amongst Computing Students—A Key in the Retention Debate? , 2009, IEEE Transactions on Education.

[19]  Chris North,et al.  The Value of Information Visualization , 2008, Information Visualization.

[20]  Jeannette M. Wing An introduction to computer science for non-majors using principles of computation , 2007, SIGCSE.

[21]  Jenn Shreve Let the Games Begin. Video Games, Once Confiscated in Class, Are Now a Key Teaching Tool. If They're Done Right. , 2005 .

[22]  N. Cowan The magical number 4 in short-term memory: A reconsideration of mental storage capacity , 2001, Behavioral and Brain Sciences.

[23]  Nelson Cowan,et al.  Processing limits of selective attention and working memory: Potential implications for interpreting , 2000 .

[24]  Donald E. Knuth,et al.  Literate Programming , 1984, Comput. J..