Investigating the performance of automatic new topic identification across multiple datasets 1


Autoria(s): Ozmutlu, H. C.; Cavdur, F.; Spink, Amanda H.; Ozmutlu, S.
Data(s)

2006

Resumo

Recent studies on automatic new topic identification in Web search engine user sessions demonstrated that neural networks are successful in automatic new topic identification. However most of this work applied their new topic identification algorithms on data logs from a single search engine. In this study, we investigate whether the application of neural networks for automatic new topic identification are more successful on some search engines than others. Sample data logs from the Norwegian search engine FAST (currently owned by Overture) and Excite are used in this study. Findings of this study suggest that query logs with more topic shifts tend to provide more successful results on shift-based performance measures, whereas logs with more topic continuations tend to provide better results on continuation-based performance measures.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/47859/

Publicador

Wiley & Blackwell Publishing

Relação

http://eprints.qut.edu.au/47859/1/47859.pdf

DOI:10.1002/meet.1450430129

Ozmutlu, H. C., Cavdur, F., Spink, Amanda H., & Ozmutlu, S. (2006) Investigating the performance of automatic new topic identification across multiple datasets 1. In Proceedings of the American Society for Information Science and Technology, Wiley & Blackwell Publishing.

Direitos

Wiley Blackwell

Fonte

Office of Education Research; Faculty of Education

Tipo

Conference Paper