Autores
Gelbukh Alexander
Título Greedy Optimization Method for Extractive Summarization of Scientific Articles
Tipo Revista
Sub-tipo JCR
Descripción IEEE Access
Resumen This work presents a method for summarizing scientific articles from the arXive and PubMed datasets using a greedy Extractive Summarization algorithm. We used the approach along with Variable Neighborhood Search (VNS) to learn what is the top-line exists in the area of Extractive Text Summarization quality in terms of ROUGE scores. The algorithm is based on first selecting for the summary the sentences from the text containing the maximum number of words with the higher TFIDF values along with minimum document frequency parameter tuning for TFIDF vectorization. As a result, the method achieves 0.43/0.12 and 0.40/0.13 for ROUGE-1/ROUGE-2 scores on arXive and PubMed datasets, respectively. These results are comparable to the state-of-the-art models using complex neural network architectures and serious computational resources together with the large amounts of training data. In contrast, our method uses a straightforward statistical inference methodology. © 2013 IEEE.
Observaciones DOI 10.1109/ACCESS.2021.3136302
Lugar New Jersey
País Estados Unidos
No. de páginas 168141-168153
Vol. / Cap. v. 9
Inicio 2022-12-16
Fin
ISBN/ISSN