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Home : College of Science and Engineering : School of Informatics (Schedule O) : Computational Linguistics

Natural Language Generation (Level 11) (P02748)

? Credit Points : 10  ? SCQF Level : 11  ? Acronym : INF-P-NLG-5

The area of study called natural language generation (NLG)
investigates how computer programs can be made to produce high-quality natural language text or speech from computer-internal representations of information (or other texts). Motivations for this study range from foundational attempts to understand how people produce text and speech
(linguistic, psycholinguistic) to entirely practical efforts to produce natural language output for a wide range of applications, including automatic explanation from advisory systems, automatic summarisation from single or multiple documents, machine translation, dialogue systems, human-robot interaction, tutorial systems, and many
more.

An introduction to the theory and practice of computational approaches to natural language generation. The course will cover common approaches to content selection and organization, sentence planning, and realisation. The course will cover both symbolic approaches to generation, as well as more recent statistical and trainable techniques.
It also aims to provide:

- An understanding of key aspects of human language production;
- An understanding of evaluation methods used in this field;
- Exposure to techniques and tools used to develop practical systems that can communicate with users;
- Insight into open research problems in applications of natural language generation, e.g., summarization, paraphrase, dialogue, multimodal discourse.

Entry Requirements

? Pre-requisites : Advanced Natural Language Processing Introductory Applied Machine Learning For Informatics PG and final year MInf students only, or by special permission of the School.

? Prohibited combinations : Natural Language Generation (Level 10)

Subject Areas

Delivery Information

? Normal year taken : Postgraduate

? Delivery Period : Not being delivered

? Contact Teaching Time : 2 hour(s) per week for 10 weeks

All of the following classes

Type Day Start End Area
Lecture Monday 09:00 09:50 Central

Summary of Intended Learning Outcomes

Given an NLG system students should be able to:
- Provide a written analysis of how the main theories and algorithms behind NLG systems have been incorporated into the system, including an exposition of the theories and algorithms.
- Provide the basis for the evaluation of the system by diagnosing its relations to other NLG systems, and to human performance data.

Given a simple NLG problem, students should be able to use computational tools and methodologies to solve it.

Given a current area of NLG research, students should be able to locate and summarise recent progress in the area.

Given and open-ended NLG problem, students should be able to provide a well-justified solution to the problem using the range of tools and techniques covered in the course.

Assessment Information

Written Examination - 70%
Assessed Coursework - 30%

Exam times

Diet Diet Month Paper Code Paper Name Length
1ST May - - 2 hour(s)

Contact and Further Information

The Course Secretary should be the first point of contact for all enquiries.

Course Secretary

Miss Gillian Watt
Tel : (0131 6)50 5194
Email : gwatt@inf.ed.ac.uk

Course Organiser

Dr Douglas Armstrong
Tel : (0131 6)50 4492
Email : Douglas.Armstrong@ed.ac.uk

Course Website : http://www.inf.ed.ac.uk/teaching/courses/

School Website : http://www.informatics.ed.ac.uk/

College Website : http://www.scieng.ed.ac.uk/

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