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Introduction to Probability and Statistics (STAT0002)

Key information

Faculty
Faculty of Mathematical and Physical Sciences
Teaching department
Statistical Science
Credit value
15
Restrictions
This module is only available to students registered on the following degree programmes: Affiliate Statistics - BSc Data Science - BSc(Econ) Economics and Statistics - BSc Global Humanitarian Studies - BSc/MSci Mathematics and Statistical Science - BSc/MSci Natural Sciences - BSc Statistics - BSc Statistics and Management for Business - BSc Statistics, Economics and Finance - BSc Statistics, Economics and a Language - MSci Statistical Science (International Programme).
Timetable

Alternative credit options

There are no alternative credit options available for this module.

Description

This module aims to provide an accessible and application-oriented introduction to basic ideas in probability and statistics. Together with STAT0003 and STAT0004, it provides the foundation for further study of statistics to students on the undergraduate degree programmes offered by the Department of Statistical Science (including the MASS programmes). It also serves as a foundation module for students considering the Mathematics and Statistics stream of the Natural Sciences degree. For all these students, the academic prerequisites for this module are satisfied via successful admission to their programme. The module can also accommodate a limited number of students from theÌýBSc Global Humanitarian Studies degree (with prerequisite:ÌýA-Level Mathematics Grade A, or equivalent).

Intended Learning Outcomes

  • understand, at an intuitive level, the basic concepts in probability theory;
  • be able to use fundamental laws of probability to solve simple problems;
  • recognise simple situations in which standard univariate probability distributions may be useful, and apply results for these distributions as appropriate in these situations;
  • be able to choose and apply appropriate simple techniques for the presentation and description of data;
  • understand the concepts of a probability model and sampling variability;
  • be aware of the need to check assumptions made when using a given probability model.

Applications - This module motivates the use of probability and statistics in a wide range of application areas. Recent high-profile statistical applications in areas such as politics, road safety, space travel, public health and criminal justice are discussed. Smaller teaching examples come from astronomy, medicine, meteorology, education, genetics, finance and physics.

Indicative Content - Idea and rules of probability via proportions in a population. Conditional probability, associated results and applications. Notion of independence. Simple distributions (binomial, geometric, Poisson, uniform, normal and exponential). Concepts of expectation and variance, simple rules (without proof). Examples of real investigations. Types of data, graphs, tables and summary statistics. Samples and populations. Probability models, unknown parameters, fitting models to data and assessing goodness of fit informally. Notion of uncertainty in estimation; illustration via simulation. Contingency tables (2- and 3-way), row and column proportions. Regression and correlation as bivariate descriptions: principle of least squares, use of transformations.

Key Texts - Available from .

Module deliveries for 2024/25 academic year

Intended teaching term: Term 1 ÌýÌýÌý Undergraduate (FHEQ Level 4)

Teaching and assessment

Mode of study
In person
Methods of assessment
75% Exam
25% Coursework
Mark scheme
Numeric Marks

Other information

Number of students on module in previous year
318
Module leader
Dr Paul Northrop
Who to contact for more information
stats.ugt@ucl.ac.uk

Last updated

This module description was last updated on 19th August 2024.

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