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# Additional resources {#c18}
**Abstract**
This chapter contains resources relevant for those interested in data science in education. Resources range from freely available courses and materials from workshops to other books on data science in education, equity considerations, the broader field of data science, and related areas, including those on introductory and advanced statistical methods.
## Chapter overview
In this chapter, we provide links and references to additional, recommended resources relevant to data science in education.
## Data science courses
Anderson, D. J. (2019). University of Oregon data science specialization for the college of education. https://github.com/uo-datasci-specialization
> A series of courses that emphasize the use of R on data science in education (graduate-level).
Landers, R. N. (2019). Data science for social scientists. http://datascience.tntlab.org/
> A data science course for social scientists.
RStudio. (2019). Data science in a box. https://datasciencebox.org/hello/
> A complete course, including a curriculum and teaching materials, for data science.
## Workshop materials
Staudt Willet, B., Greenhalgh, S., & Rosenberg, J. M. (2019, October). Workshop on using R at the Association for Educational Communications and Technology. https://github.com/bretsw/aect19-workshop
> Contains slides and code for a workshop carried out at an educational research conference, focused on how R can be used to analyze Internet (and social media) data.
Anderson, D. J., & Rosenberg, J. M. (2019, April). Transparent and reproducible research with R. Workshop carried out at the Annual Meeting of the American Educational Research Association, Toronto, Canada. https://github.com/ResearchTransparency/rr_aera19
> Slides and code for another workshop carried out at an educational research conference, focused on reproducible research and R Markdown.
## Data visualization
Tufte, E. (2006). *Beautiful evidence*. Graphics Press LLC. https://www.edwardtufte.com/tufte/books_be
> A classic text on data visualization.
Healy, K. (2018). *Data visualization: A practical introduction*. Princeton University Press. http://socviz.co/
> A programming- and R-based introduction to data visualization.
Chang, W. (2013). *R graphics cookbook*. O'Reilly. https://r-graphics.org/
> This book is a great reference and how-to for executing many visualization techniques using {ggplot2}.
Wilke, C. (2019). *Fundamentals of data visualization*. O'Reilly. https://serialmentor.com/dataviz/
> A fantastic (though more *conceptual* than practical, i.e., there is no R code or other software implementation for creating the plots) introduction to data visualization.
## Books related to data science in education
Geller, W., Cratty, D., & Knowles, J. (2020). *Education data done right: Lessons from the trenches of applied data science.* Leanpub. https://leanpub.com/eddatadoneright
> This book explores best practices in education data work. It includes chapters on data governance, working with IT, and managing data requests. This book will help you apply your data science skills effectively in an education system.
Krumm, A., Means, B., & Bienkowski, M. (2018). *Learning analytics goes to school: A collaborative approach to improving education.* Routledge. https://www.routledge.com/Learning-Analytics-Goes-to-School-A-Collaborative-Approach-to-Improving/Krumm-Means-Bienkowski/p/book/9781315650722
> This book emphasizes data-driven improvement using new sources of data and learning analytics and data mining techniques.
## Articles related to data science in education
Dutt, A., Ismail, M. A., & Herawan, T. (2017). A systematic review on educational data mining. *IEEE Access, 5*, 15991-16005. https://ieeexplore.ieee.org/abstract/document/7820050
> A comprehensive review of past research on educational data mining, with an emphasis on methods used in past research.
Lee, V. R., & Wilkerson, M. (2018). *Data use by middle and secondary students in the digital age: A status report and future prospects.* Commissioned Paper for the National Academies of Sciences, Engineering, and Medicine, Board on Science Education, Committee on Science Investigations and Engineering Design for Grades 6-12. Washington, DC. https://digitalcommons.usu.edu/itls_facpub/634/
> A comprehensive and incisive review of both recent and foundational research on what is known about how learners at the K--12 level analyze data.
Lehrer, R., & Schauble, L. (2015). *Developing scientific thinking*. In L. S. Liben & U. Müller (Eds.), *Cognitive processes. Handbook of child psychology and developmental science* (Vol. 2, 7th ed., pp. 671--174). Wiley. https://www.wiley.com/en-us/Handbook+of+Child+Psychology+and+Developmental+Science%2C+7th+Edition-p-9781118136850
> Describes the "data modeling" approach which has been used to support learners at the K--12 level to develop data analysis-related capabilities.
Rosenberg, J. M., Edwards, A., & Chen, B. (2020). Getting messy with data: Tools and strategies to help students analyze and interpret complex data sources. *The Science Teacher, 87*(5). https://search.proquest.com/openview/efbd11290f17b5dd9ff27c9c491ca25b/1?pq-origsite=gscholar&cbl=40590
> An overview of digital tools (including R) and strategies for teaching data analysis to K--12 students (particularly in science education settings).
Rosenberg, J. M., Lawson, M. A., Anderson, D. J., Jones, R. S., & Rutherford, T. (2020). Making data science count in and for education. In E. Romero-Hall (Ed.), *Research methods in learning design & technology*. Routledge. https://edarxiv.org/hc2dw/
> Defines data science in education (as the use of data science methods) and data science for education (as a context for teaching and learning).
Schneider, B., Reilly, J., & Radu, I. (2020). Lowering barriers for accessing sensor data in education: Lessons learned from teaching multimodal learning analytics to educators. *Journal for STEM Education Research*, 1--34. https://link.springer.com/article/10.1007/s41979-020-00027-x
> A study of the effects of a course designed to teach graduate students in educational programs to analyze data using learning analytics techniques.
Wise, A. F. (2020). Educating data scientists and data literate citizens for a new generation of data. *Journal of the Learning Sciences, 29*(1), 165--181. https://doi.org/10.1080/10508406.2019.1705678
> A description of some of the opportunities and challenges of learning to analyze data in light of new data sources and data analysis (and data science) techniques.
Wilkerson, M. H., & Polman, J. L. (2020). Situating data science: Exploring how relationships to data shape learning. *Journal of the Learning Sciences, 29*(1), 1--10. https://doi.org/10.1080/10508406.2019.1705664
> An introduction to a special issue of the *Journal of the Learning Sciences* on data science education.
## Equity resources
O'Neil, C. (2016). *Weapons of math destruction: How big data increases inequality and threatens democracy* (1st ed.). Crown.
We All Count: [https://weallcount.com/](https://weallcount.com/)
Data for Black Lives: [http://d4bl.org/](http://d4bl.org/)
## Programming with R
Wickham, H., & Grolemund, G. (2017). *R for data science*. O'Reilly.
> "You have data but have no idea on how to make sense of it". If this statement resonates with you, then look no further. Introducing `R` for data analysis. At its core, R is a statistical programming language. It helps derive useful information from the data deluge. This book assumes you're a novice at data analytics and will subtly introduce you to the nuances of R, RStudio, and the tidyverse (which is a collection of R packages designed to ensure your learning curve is minimal).
Teetor, P. (2011). *R cookbook*. O'Reilly.
> This book provides over 200 practical solutions for analyzing data using R.
Bryan, J., & Hestor, J. *Happy git and github for the useR*. Retrieved from [https://happygitwithr.com](https://happygitwithr.com)
> A fantastic and accessible introduction to using Git and GitHub.
## Statistics
### Introductory statistics
Open Intro. (2019). Textbooks. https://www.openintro.org/
> Three open-source textbooks for statistics, one for high school students.
Navarro, D. (2019). *Learning statistics with R*. https://learningstatisticswithr.com/
> An introductory textbook with a focus on applications to psychological research.
Field, A., Miles, J., & Field, Z. (2012). *Discovering statistics using R*. Sage publications.
> Emphasizes many of the most common statistical tests, especially those used in psychology and educational psychology.
> Covers the foundations thoroughly and in an entertaining way.
Ismay, C., & Kim, A. Y. (2019). *ModernDive: Statistical inference via data science.* CRC Press. https://moderndive.com/
> An introductory statistics textbook with an emphasis on developing an intuition for the processes underlying modeling data (and hypothesis testing).
James, G., Witten, D., Hastie, T., & Tibshirani, R. (2015). *An introduction to statistical learning with applications in R*. Springer.
> This is an introductory (and R-based) version of a classic book on machine learning by @hastie2009.
Peng, R. D. (2019). *R programming for data science*. Leanpub. https://leanpub.com/rprogramming
> Emphasizes R as a programming language and writing R functions and packages.
Peng, R. D., & Matsui, E. (2018). *The art of data science*. Leanpub. https://leanpub.com/artofdatascience
> This book is a wonderful teaching tool and reference for R users. It describes underlying concepts of R as a programming language and provides practical guides for commonly used functions.
### Advanced statistics
Gelman, A., & Hill, J. (2006). *Data analysis using regression and multilevel/hierarchical models*. Cambridge University Press.
> A fantastic introduction not only to regression (and multi-level/hierarchical linear models and Bayesian methods) but also to statistical analysis in general.
Hastie, T., Tibshirani, R., & Friedman, J. (2009). *The elements of statistical learning: data mining, inference, and prediction*. Springer Science & Business Media.
> A classic text on Machine Learning.
West, B. T., Welch, K. B., & Galecki, A. T. (2014). *Linear mixed models: a practical guide using statistical software.* Chapman and Hall/CRC.
> A solid introduction to multi-level/hierarchical linear models, including code in R (with an emphasis on the lme4 R package).
McElreath, R. (2018). *Statistical rethinking: A Bayesian course with examples in R and Stan.* Chapman and Hall/CRC.
> A new classic, accessible introduction to Bayesian methods. We note that this book has been "translated" into tidyverse code by @kurz2019.
## R packages and statistical software development
Peng, R. D. (2019). *Mastering software development in R*. Leanpub. https://leanpub.com/msdr
> Developing packages in R, including a description of an example package for data visualization.
Wickham, H. (2015). *R packages: Organize, test, document, and share your code*. O'Reilly. http://r-pkgs.had.co.nz/
> A comprehensive introduction to (and walkthrough for) creating your own R packages.
## A career in data science
Robinson, E., & Nolis, J. (2020). *Building a career in data science*. Manning. https://www.manning.com/books/build-a-career-in-data-science?a_aid=buildcareer&a_bid=76784b6a
> Advice on the technical and practical requirements to work in a data science role.
## Places to share your work
Twitter: [twitter.com](twitter.com)
> Especially through the hashtags we mentioned below.
LinkedIn: [linkedin.com](linkedin.com)
> This can be a place to share not only career updates but also data science-related works-in-progress.
## Cheat sheets
[RStudio Cheat Sheets](https://rstudio.com/resources/cheatsheets/) (https[]()://rstudio.com/resources/cheatsheets/)
> See especially the {dplyr}, {tidyr}, {purrr}, {ggplot2}, and other cheat sheets.