The efficiency of corpus-based distributional models for literature-based discovery on large data sets


Autoria(s): Symonds, Michael; Bruza, Peter D.; Sitbon, Laurianne
Data(s)

25/10/2014

Resumo

This paper evaluates the efficiency of a number of popular corpus-based distributional models in performing discovery on very large document sets, including online collections. Literature-based discovery is the process of identifying previously unknown connections from text, often published literature, that could lead to the development of new techniques or technologies. Literature-based discovery has attracted growing research interest ever since Swanson's serendipitous discovery of the therapeutic effects of fish oil on Raynaud's disease in 1986. The successful application of distributional models in automating the identification of indirect associations underpinning literature-based discovery has been heavily demonstrated in the medical domain. However, we wish to investigate the computational complexity of distributional models for literature-based discovery on much larger document collections, as they may provide computationally tractable solutions to tasks including, predicting future disruptive innovations. In this paper we perform a computational complexity analysis on four successful corpus-based distributional models to evaluate their fit for such tasks. Our results indicate that corpus-based distributional models that store their representations in fixed dimensions provide superior efficiency on literature-based discovery tasks.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/63726/

Publicador

Australian Computer Society Inc.

Relação

http://eprints.qut.edu.au/63726/1/AWC2014.2.0.pdf

http://crpit.com/Vol155.html

Symonds, Michael, Bruza, Peter D., & Sitbon, Laurianne (2014) The efficiency of corpus-based distributional models for literature-based discovery on large data sets. In Proceedings of the Second Australasian Web Conference [Conferences in Research and Practice in Information Technology, Volume 155], Australian Computer Society Inc., Auckland, pp. 49-57.

Direitos

Copyright 2014 [please consult the author]

Fonte

School of Information Systems; Science & Engineering Faculty

Palavras-Chave #080600 INFORMATION SYSTEMS #080707 Organisation of Information and Knowledge Resources #Distributional Models #discovery #literature-based discovery #paradigmatic associations #corpus-based
Tipo

Conference Paper