Durham University
Programme and Module Handbook

Postgraduate Programme and Module Handbook 2023-2024

Module MATH42715: Introduction to Statistics for Data Science

Department: Mathematical Sciences

MATH42715: Introduction to Statistics for Data Science

Type Tied Level 4 Credits 15 Availability Available in 2023/24 Module Cap None.
Tied to G5K823
Tied to G5K923
Tied to G5P223
Tied to G5P123
Tied to G5P323
Tied to G5P423

Prerequisites

  • None

Corequisites

  • None

Excluded Combination of Modules

  • None

Aims

  • To introduce the fundamentals of statistics needed for data science.

Content

  • Introduction to probability: independent events, conditional probability, expectation, probability distributions, computing probabilities.
  • Exploratory statistics: descriptive statistics, data types and data collection.
  • Statistical inference: sampling distributions, estimation, and hypothesis testing.
  • Linear models: assumptions, estimation, inference, prediction.
  • Classification and clustering methods.
  • Transferable skills including teamwork, time-management, presentation, communication, organisation, and prioritisation skills.

Learning Outcomes

Subject-specific Knowledge:
  • By the end of the module students should be able to demonstrate the following statistical and computing skills:
  • Understanding of principles of probability.
  • The creation of descriptive and graphical data analysis, and knowledge of their use to make inferences.
  • Creation of appropriate statistical models, with emphasis on formatting, presentation, and interpretation of data.
  • Interpretation of statistical models including diagnostics and validation.
  • Understanding the use of statistical methods as an underpinning of classification methods.
Subject-specific Skills:
  • Students should be able to:
  • Use statistical software R to conduct basic data analysis and manipulation including the creation of graphical data summaries and appropriate statistical models.
  • Justify modelling approaches as well as draw appropriate conclusions and make appropriate recommendations.
  • Critically assess the quality of models derived and conclusions drawn, and make recommendations for improvement.
Key Skills:
  • Sufficient mastery of statistical concepts to enable engagement with data science methods.
  • Ability to clearly communicate statistical models and relevant conclusions through writing and oral presentation.
  • Understanding of how to function effectively as an individual and as a member or leader of a team.
  • Ability to organise, prioritise, and manage time effectively.
  • Ability to advance and extend their knowledge through significant independent learning and research.
  • Ability to produce a clear and detailed written report with appropriate presentation.

Modes of Teaching, Learning and Assessment and how these contribute to the learning outcomes of the module

  • This module will be delivered by the Department of Mathematical Sciences.
  • Teaching will be delivered primarily by workshops. Workshops describe theory and its application to concrete examples, enable students to test and develop their understanding of the material by applying it to practical problems, and provide feedback and encourage active engagement.
  • Workshops are delivered in hybrid mode and are a combination of live lectures, computer practicals, problem classes, tutorials, and guided group work.
  • Workshops will be supported by the distribution of materials such as video content, directed reading, e-assessments, reflective activities, opportunities for self-assessment, and peer-to-peer learning within a tutor-facilitated discussion board.
  • Students will be able to obtain further help in their studies via scheduled office hours or surgeries as well as by approaching their lecturers by email.
  • Students will be expected to work in between workshops, and to discuss their own work during the workshops. This work will be guided by the module leader, but will be organised by the students themselves, thereby enabling them to demonstrate their time management skills.
  • Students will undertake independent research to further their knowledge of the topic and self-directed learning to further their technical and transferable skills.
  • The workshops also provide opportunities for module leaders to monitor progress and to provide feedback and guidance on the development of ideas for the project, and for students to gauge their progress throughout the duration of the module.
  • Student performance will be assessed through two individual assignments, short group report including reflective feedback, a group presentation, and a final group report.
  • The individual assignments will provide the means for students to demonstrate their acquisition of subject knowledge and the development of their problem-solving skills.
  • The group reports and presentation will provide the means for students to demonstrate their acquisition of subject knowledge, subject-specific skills, as well as key skills.

Teaching Methods and Learning Hours

Activity Number Frequency Duration Total/Hours
Workshops 10 Once per week (Term 1, weeks 1-10) 2 hours 20
Preparation, exercises, and reading 130
tOTAL 150

Summative Assessment

Component: Assignment Component Weighting: 50%
Element Length / duration Element Weighting Resit Opportunity
Individual assignment 1 50% Yes
Individual assignment 2 50% Yes
Component: Project Component Weighting: 50%
Element Length / duration Element Weighting Resit Opportunity
Continuous group assessment 3 short reports 30% Yes
Group project presentation 30% Individual video recording
Group project report 40% Individual project report

Formative Assessment:

Workshop discussion of students' ideas and experiences; informal discussions of student progress with module leader when necessary; interim feedback on group project via continuous group assessment.


Attendance at all activities marked with this symbol will be monitored. Students who fail to attend these activities, or to complete the summative or formative assessment specified above, will be subject to the procedures defined in the University's General Regulation V, and may be required to leave the University