CF969-7-SP-CO:
Big-Data for Computational Finance

The details
2021/22
Computational Finance and Economic Agents (Centre for)
Colchester Campus
Spring
Postgraduate: Level 7
Current
Monday 17 January 2022
Friday 25 March 2022
15
31 March 2021

 

Requisites for this module
(none)
(none)
(none)
(none)

 

(none)

Key module for

MSC N35012 Artificial Intelligence in Finance

Module description

The vast proliferation of data and increasing technological complexities continue to transform the way industries operate and compete. Over the last two years, 90 percent of the data in the world has been created as a result of the creation of 2.5 exabytes of data on a daily basis. Commonly referred to as big data, this rapid growth and storage creates opportunities for collection, processing and analysis of structured and unstructured data.

Financial services, in particular, have widely adopted big data analytics to inform better investment decisions with consistent returns. In conjunction with big data, modern optimisation techniques (such as linear programming) are adopted to solve many computational finance problems ranging from asset allocation to risk management, from option pricing to model calibration. The continued adoption of big data will inevitably transform the landscape of financial services.

The module will be a mix of theory and practice with big data cases in finance.
For the theoretical part, the algorithmic and data science theories will be introduced and followed by a thorough introduction of data-driven algorithms for structured and unstructured data. Modern machine learning and data mining algorithms will be introduced with particular case studies on financial industry.

For the pratical part, the big data in finance cases will be introduced together with the study of relevant software tools.

Module aims

The aims of this module are to introduce students to the concept of big data and the rapid growth in online storage. Financial services have widely adopted big data analytics to better inform investment decisions. We adopt big data strategies to solve a number of financial problems.


Module learning outcomes

After completing this module, students will be expected to be able to:

1) Understand the principles of (data-driven) algorithms such as modern machine learning and data mining algorithms
2) Understand the application of (data-driven) algorithms on financial industry
3) Use software tools to build up data-driven algorithms and analyse the huge amount of historical data

Module information

No additional information available.

Learning and teaching methods

No information available.

Bibliography

This module does not appear to have a published bibliography for this year.

Assessment items, weightings and deadlines

Coursework / exam Description Deadline Coursework weighting
Coursework   Assignment    100% 

Exam format definitions

  • Remote, open book: Your exam will take place remotely via an online learning platform. You may refer to any physical or electronic materials during the exam.
  • In-person, open book: Your exam will take place on campus under invigilation. You may refer to any physical materials such as paper study notes or a textbook during the exam. Electronic devices may not be used in the exam.
  • In-person, open book (restricted): The exam will take place on campus under invigilation. You may refer only to specific physical materials such as a named textbook during the exam. Permitted materials will be specified by your department. Electronic devices may not be used in the exam.
  • In-person, closed book: The exam will take place on campus under invigilation. You may not refer to any physical materials or electronic devices during the exam. There may be times when a paper dictionary, for example, may be permitted in an otherwise closed book exam. Any exceptions will be specified by your department.

Your department will provide further guidance before your exams.

Overall assessment

Coursework Exam
100% 0%

Reassessment

Coursework Exam
100% 0%
Module supervisor and teaching staff
Dr Panagiotis Kanellopoulos, email: panagiotis.kanellopoulos@essex.ac.uk.
Dr Panagiotis Kanellopoulos, Dr Michael Kampouridis
School Office, e-mail csee-schooloffice (non-Essex users should add @essex.ac.uk to create full e-mail address), Telephone 01206 872770.

 

Availability
Yes
No
Yes

External examiner

Dr Anna Jordanous
University of Kent
Senior Lecturer
Resources
Available via Moodle
Of 599 hours, 40 (6.7%) hours available to students:
559 hours not recorded due to service coverage or fault;
0 hours not recorded due to opt-out by lecturer(s).

 

Further information

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