Graph based automatic document summarization with different similarity methods [Farkli Benzerlik Yöntemleriyle Çizge Tabanli Otomatik Doküman Özetleme]
Abstract
Today, with the rapid increase in the use of the internet, thousands of resources can be reached about an information that is interested. However, it is difficult and time consuming to determine which of these sources is useful. Automatic document summarization is a dimension reduction process which remains the important parts of the text. In this study, the TextRank algorithm, which is a graph based summarization approach, is used with 4 different similarity methods. The effect of these methods on the automatically generated summaries is examined. Among the similarity methods, Levenhesiten method was more successful than others with 0,506 Rouge-1 score. © 2017 IEEE.
Source
2017 25th Signal Processing and Communications Applications Conference, SIU 2017Collections
- Bildiri Koleksiyonu [210]