This information is for the 2020/21 session.
Teacher responsible
Prof Qiwei Yao Col.7.16
Availability
This course is available on the BSc in Accounting and Finance, BSc in Business Mathematics and Statistics and BSc in Mathematics, Statistics and Business. This course is available as an outside option to students on other programmes where regulations permit. This course is available with permission to General Course students.
This course is available as an outside option to the students who are interested in data analytics and who have statistical background at least equivalent to ST107 or ST108. No prior knowledge in programming is required. However students who have no previous experience in R are strongly encouraged to take on an online pre-sessional R course from the Digital Skill Lab (https://moodle.lse.ac.uk/course/view.php?id=7022).
This course is capped at 60 for the 2019/20 session.
Pre-requisites
Students must have completed a statistical course at least equivalent to Quantitative Methods (Statistics) (ST107) or Statistical Methods for the Social Sciences (ST108).
Students who have no previous experience in R are strongly encouraged to take on an online pre-sessional R course from the Digital Skill Lab (https://moodle.lse.ac.uk/course/view.php?id=7022).
Course content
The primary focus of this course is to help students view various problems from business, economy/finance, and social domains from a data perspective and understand the principles of extracting useful information and knowledge from data. Students will also gain the hands-on experience using R -- a programming language and software environment for data analysis and visualisation. Learning basic data analytic methods and techniques is combined with real-life examples.
The core contents of the course include data cleansing, data transformation, data visualisation, R-programming, classification, regression, clustering, over-fitting avoidance and model evaluation. The course also covers a subset of the following topics: illustration of R-access of databases and big data platforms, illustration of parallel computing in R, similarity matching, market-basket analysis, link prediction, text mining, network analysis, causal modelling.
This is not a course on algorithms and IT technologies required for handling massive data, which deserve separate courses. The focus is on the fundamental principles and concepts of data analytics or data science. It becomes ever-increasingly important in this information age to gain adequate understanding of data science even if one never intends to apply it oneself.
Teaching
This course will be delivered through a combination of classes and lectures totalling a minimum of 30 hours in Michaelmas Term. This year, some or all of this teaching may be delivered through a combination of virtual classes and flipped-lectures delivered as short online videos.
Students are encouraged to install R in their own laptops, and to use their own laptops in the workshops.
Formative coursework
Students will be expected to produce 6 exercises in the MT.
Studeents are expected to complete siix sets of exercises involving substantial data analysis using R.
Indicative reading
Wickham, H, and Grolemund, G. (2017). R for Data Science. O'Reilly. Available online at http://r4ds.had.co.nz
James, G., Witten, D., Hastie, T. and Tibshirani, R. (2013). An Introduction to Statistical Learning with Applications in R. Springer. Available online at http://www-bcf.usc.edu/~gareth/ISL
Provost, F. and Fawcett, T. (2013). Data Science for Business. O'Reilly.
Zuur, A., Ieno, E. and Meesters, E. (2009). A Beginner’s Guide to R. Springer. Available online from ÐÓ°ÉÂÛ̳ Library.
Hastie, T., Tibshirani, R and Friedman, R. (2009). The Elements of Statistical Learning: Data Mining, Inference, and Prediction. 2nd Edition. Springer. Available online at https://web.stanford.edu/~hastie/Papers/ESLII.pdf
Silge, J. and Robinson, D. (2017). Text Mining with R: a tidy approach. O’Reilly. Available online at https://www.tidytextmining.com
Wickham, H. (2016). ggplot2: Elegant Graphics for Data Analysis. Springer. Available online at http://moderngraphics11.pbworks.com/f/ggplot2-Book09hWickham.pdf
Assessment
Coursework (30%) in the MT.
Project (70%) in the LT.
The project will be a group project with maximum 3 members per group. The detailed instruction will be handed out in Week 5 of Michaelmas term, and students need to submit a written report by Week 5 of Lent term.
Students are required to hand in the solutions for 3 sets of exercises which account for the total 30% of the final grade.
Key facts
Department: Statistics
Total students 2019/20: 58
Average class size 2019/20: 19
Capped 2019/20: Yes (60)
Value: Half Unit
Personal development skills
Important information in response to COVID-19
Please note that during 2020/21 academic year some variation to teaching and learning activities may be required to respond to changes in public health advice and/or to account for the situation of students in attendance on campus and those studying online during the early part of the academic year. For assessment, this may involve changes to mode of delivery and/or the format or weighting of assessments. Changes will only be made if required and students will be notified about any changes to teaching or assessment plans at the earliest opportunity.