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14 Jan 2026 (Available)

Apply by: 13 Jan 2026

In-person: Wednesday 14th January 2026, 09:30-17:00

University of Hertfordshire, Hatfield, Hertfordshire

Course overview

This course introduces a range of methods for exploring and analysing multivariate data, starting with graphical/exploratory methods, and including cluster analysis, discriminant function analysis, principal components analysis and factor analysis.


For simplicity, the course makes use of the jamovi software for demonstration and exercises.  However, if preferred, any other advanced statistical software can be used (e.g. SPSS or R).


See our full range of courses (and options for bespoke courses) at https://go.herts.ac.uk/sscu or contact the course organiser, Professor Neil Spencer, at statistics@herts.ac.uk.

Funding

£249.00

If you are unable to pay by card and require an invoice, please email statistics@herts.ac.uk.

Why choose Herts?

Over 25 years' experience of delivering quality short courses in Statistics

1st in the UK for support and top 10 in every other section, Postgraduate Taught Experience Survey (PTES), 2024

25 mins north of London: Exciting learning and social experiences within easy access

78% of research ranked as world-leading or internationally excellent, Research Excellence Framework (REF), 2021

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Course details

Course leader

Neil Spencer

Administrator

Neil Spencer

Telephone

Please email for prompt response

Course delivery

In-person

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Prerequisites

To make the most of this course, delegates should already have a working knowledge of multiple regression and analysis of variance (ANOVA).  Though not essential, it is recommended that delegates first attend either the “Survey Design & Analysis” stream of courses (see here and here) or “Quantitative Data Analysis” stream of courses (see here and here).

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Hertfordshire Business School

EMDA-Hatfield [Short Course] 2025/26 - £249.00

Essentials of Multivariate Data Analysis (In-person course)

0 Credits

Academic Level:

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