Abu-Mostafa, Yaser S., Malik Magdon-Ismail, and Hsuan-Tien Lin. 2012. Learning from Data: A Short Course. AMLBook.com.
Barber, David. 2012. Bayesian Reasoning and Machine Learning. Cambridge University Press.
Bishop, C. M. 2006. Pattern Recognition and Machine Learning. Information science and Statistics. Springer.
Casella, George, and Roger L. Berger. 2017. Statistical Inference. Second edition. The Duxbury advanced series in statistics and Decision sciences. Cengage Learning.
Goodfellow, Ian, Yoshua Bengio, and Aaron Courville. 2016. Deep Learning. Adaptive computation and Machine learning. The MIT Press.
Grimmett, Geoffrey, and David Stirzaker. 2001. Probability and Random Processes. Third edition. Oxford University Press.
Harrington, Peter. 2012. Machine Learning in Action. Manning Publications.
Hastie, Trevor, Robert Tibshirani, and J. H. Friedman. 2001. The Elements of Statistical Learning: Data Mining, Inference, and Prediction : With 200 Full-Color Illustrations. Springer series in statistics. Springer.
Hastie, Trevor, Robert Tibshirani, and J. H. Friedman. 2009. The Elements of Statistical Learning: Data Mining, Inference, and Prediction. 2nd ed. Springer series in statistics. Springer.
Kabacoff, Robert. 2015. R in Action: Data Analysis and Graphics with R. Second edition. Manning.
Karau, Holden, Andy Konwinski, Patrick Wendell, and Matei Zaharia. 2013. Learning Spark: Lightning-Fast Big Data Analytics. O’Reilly. Ebook. https://www.vlebooks.com/vleweb/product/openreader?id=UniLincoln&isbn=9781449359065.
‘Kevin Sheppard - Lecture Notes’. n.d. https://www.kevinsheppard.com/Main_Page.
Kiusalaas, Jaan. 2016. Numerical Methods in Engineering with MATLAB. Third edition. Cambridge University Press.
Lantz, Brett. 2013. Machine Learning with R: Learn How to Use R to Apply Powerful Machine Learning Methods and Gain an Insight into Real-World Applications. Packt Publishing Limited. Ebook. https://www.vlebooks.com/vleweb/product/openreader?id=UniLincoln&isbn=9781782162155.
Martinez, Wendy L., and Angel R. Martinez. 2016. Computational Statistics Handbook with MATLAB. Third edition. Chapman&Hall/CRC computer science and data Analysis series. Chapman & Hall/CRC.
McKinney, Wes. 2013. Python for Data Analysis. O’Reilly. Ebook. http://proxy.library.lincoln.ac.uk/login?url=http://www.dawsonera.com/depp/reader/protected/external/AbstractView/S9781449323622.
Mood, Alexander McFarlane, Franklin A. Graybill, and Duane C. Boes. 1974. Introduction to the Theory of Statistics. Third edition. McGraw-Hill series in probability and Statistics. McGraw-Hill Book Company.
Murphy, Kevin P. 2012. Machine Learning: A Probabilistic Perspective. Adaptive computation and Machine learning. MIT Press.
Nolan, Deborah Ann, and Duncan Temple Lang, eds. 2015. Data Science in R: A Case Studies Approach to Computational Reasoning and Problem Solving. Chapman&Hall/CRC the R series. Chapman & Hall/CRC.
Peng, Roger. 2016. R Programming for Data Science. Lulu.com.
Raschka, Sebastian. 2015. Python Machine Learning: Unlock Deeper Insights into Machine Learning with This Vital Guide to Cutting-Edge Predictive Analytics. Community experience distilled. Packt Publishing. Ebook.
Sarkar, Deepayan. 2008. Lattice: Multivariate Data Visualization with R. Use R! Springer. Ebook. https://www.vlebooks.com/vleweb/product/openreader?id=UniLincoln&isbn=9780387759692.
‘Source Code for the Book: Machine Learning in Action Published by Manning’. n.d. https://github.com/pbharrin/machinelearninginaction.
Wickham, Hadley. 2009. Ggplot2: Elegant Graphics for Data Analysis. Use R! Springer. Ebook. https://www.vlebooks.com/vleweb/product/openreader?id=UniLincoln&isbn=9780387981413.
Wickham, Hadley. 2014a. Advanced R. Chapman&Hall/CRC the R series. Chapman & Hall/CRC.
Wickham, Hadley. 2014b. Advanced R. Chapman&Hall/CRC the R series. Chapman & Hall/CRC.
Wickham, Hadley. 2015. R Packages. O’Reilly Media. Ebook.
Zumel, Nina, and John Mount. 2014. Practical Data Science with R. Manning.