
Using Latent Semantic Analysis in Text Summarization and Summary Evaluation
This paper deals with using latent semantic analysis in text summarization. We describe a generic text summarization method which uses the latent semantic analysis (LSA) technique to identify semantically important sentences. This method has been further improved. Then we propose two new evaluation methods based on LSA, which measure content similarity between an original document and its summary. In the evaluation part we compare seven summarizers by a classical content-based evaluator and by the two new LSA evaluators. We also study an influence of summary length on its quality from the angle of the three mentioned evaluation methods.
Keywords: Generic Text Summarization, Latent Semantic Analysis, Summary Evaluation
Year: 2004

Authors of this publication:

Josef Steinberger
E-mail: jstein@kiv.zcu.cz

Karel Ježek
Phone: +420 377632475
E-mail: jezek_ka@kiv.zcu.cz
WWW: https://cs.wikipedia.org/wiki/Karel_Je%C5%BEek_(informatik)
Related Projects:

Automatic Text Summarisation | |
Authors: | Josef Steinberger, Karel Ježek, Michal Campr, Jiří Hynek |
Desc.: | Automatic text summarisation using various text mining methods, mainly Latent Semantic Analysis (LSA). |