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2015/16 Taught Postgraduate Module Catalogue

COMP5840M Data Mining and Text Analytics

15 creditsClass Size: 30

Module manager: Dr Eric Atwell
Email: e.s.atwell@leeds.ac.uk

Taught: Semester 2 (Jan to Jun) View Timetable

Year running 2015/16

Pre-requisite qualifications

COMP5830M Knowledge Representation and Machine Learning

Pre-requisites

COMP5830MKR & ML

This module is mutually exclusive with

COMP3776Data Mining and Text Analytics

This module is not approved as an Elective

Module summary

Introduction to linguistic theory and terminology.Understand and use algorithms and resources for implementing .and evaluating text mining and analytics systems.Develop solutions using open-source and commercial toolkits.Consider the applications of data mining and text analytics through case studies in information retrieval and extraction.

Objectives

On completion of this module, students should be able to ...

- understand theory and terminology of empirical modelling of natural language;
- understand and use algorithms, resources and techniques for implementing and evaluating text mining and analytics systems;
- demonstrate familiarity with some of the main text mining and analytics application areas;
- appreciate why unrestricted natural language processing is still a major research task.

Learning outcomes
On completion of the year/programme students should have provided evidence of being able to:
-to demonstrate in-depth, specialist knowledge and mastery of techniques relevant to the discipline and/or to demonstrate a sophisticated understanding of concepts, information and techniques at the forefront of the discipline;
-to exhibit mastery in the exercise of generic and subject-specific intellectual abilities;
-to demonstrate a comprehensive understanding of techniques applicable to their own research or advanced scholarship;
-proactively to formulate ideas and hypotheses and to develop, implement and execute plans by which to evaluate these;
-critically and creatively to evaluate current issues, research and advanced scholarship in the discipline.


Syllabus

Introduction to linguistic theory and terminology.

Algorithms and techniques for computer-assisted text processing, focusing on applied and corpus-based problems such as spell checking, collocation and co-occurence discovery and text analytics.

Open-source and commercial text mining and text analytics toolkits. Web-based natural language processing.

Case studies of current commercial applications in text mining, beyond English, Arabic data, machine translation, information retrieval, information extraction, chatbots and text classification.

Current research in text analytics.

Teaching methods

Delivery typeNumberLength hoursStudent hours
Laboratory41.004.00
Lecture201.0020.00
Private study hours117.00
Total Contact hours24.00
Total hours (100hr per 10 credits)141.00

Opportunities for Formative Feedback

Attendance monitoring and in-lecture interaction.

Methods of assessment


Coursework
Assessment typeNotes% of formal assessment
AssignmentCoursework40.00
Total percentage (Assessment Coursework)40.00

This module is re-assessed by exam only.


Exams
Exam typeExam duration% of formal assessment
Open Book exam2 hr 60.00
Total percentage (Assessment Exams)60.00

This module is re-assessed by exam only.

Reading list

There is no reading list for this module

Last updated: 05/11/2015

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