Word Associations as a Language Model for Generative and Creative Tasks

Event type: 
Doctoral dissertation
Doctoral dissertation
Respondent: 
Oskar Gross
Opponent: 
Professor Timo Honkela (University of Helsinki)
Custos: 
Professor Hannu Toivonen (University of Helsinki)
Event time: 
2016-05-06 12:00 to 14:00
Place: 
University of Helsinkin Main Building, Auditorium XIV (Unioninkatu 34, 3rd floor)
Description: 

M.Sc. Oskar Gross will defend his doctoral thesis Word Associations as a Language Model for Generative and Creative Tasks on Friday the 6th of May 2016 at 12 o'clock in the University of Helsinkin Main Building, Auditorium XIV (Unioninkatu 34, 3rd floor). His opponent is Professor Timo Honkela (University of Helsinki) and custor Professor Hannu Toivonen (University of Helsinki). The defence will be held in English.

Word Associations as a Language Model for Generative and Creative Tasks

In order to analyse natural language and gain a better understanding of documents, a common approach is to produce a language model which creates a structured representation of language which could then be used further for analysis or generation. This thesis will focus on a fairly simple language model which looks at word associations which appear together in the same sentence. We will revisit a classic idea of analysing word co-occurrences statistically and propose a simple parameter-free method for extracting common word associations, i.e. associations between words that are often used in the same context (e.g., Batman and Robin). Additionally we propose a method for extracting associations which are specific to a document or a set of documents. The idea behind the method is to take into account the common word associations and highlight such word associations which co-occur in the document unexpectedly often.

We will empirically show that these models can be used in practice at least for three tasks: generation of creative combinations of related words, document summarization, and creating poetry.

First the common word association language model is used for solving tests of creativity -- the Remote Associates test. Then observations of the properties of the model are used further to generate creative combinations of words -- sets of words which are mutually not related, but do share a common related concept.

Document summarization is a task where a system has to produce a short summary of the text with a limited number of words. In this thesis, we will propose a method which will utilise the document-specific associations and basic graph algorithms to produce summaries which give competetive performance on various languages. Also, the document-specific associations are used in order to produce poetry which is related to a certain document or a set of documents. The idea is to use documents as inspiration for generating poems which could potentially be used as commentary to news stories.

Empirical results indicate that both, the common and the document-specific associations, can be used effectively for different applications. This provides us with a simple language model which could be used for different languages.

Availability of the dissertation

An electronic version of the doctoral dissertation is available on the e-thesis site of the University of Helsinki.

 

Printed copies will be available on request from Oskar Gross: [email protected].


Last updated on 20 Apr 2016 by Noora Suominen de Rios - Page created on 20 Apr 2016 by Noora Suominen de Rios