Title of article :
Application of Machine Learning Techniques in Persian Text Summarization Systems
Author/Authors :
Hosseinzadeh، Sayede Azadeh نويسنده Islamic Azad University, Bushehr , , Dianat، Ruhollah نويسنده Qom University, Tehran , , Bahrani Jahromi ، Mohammad نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
With the rapid growth of the Internet and the
increasing information and online resources to find the
desired information from large volumes of information to
users is difficult. The method proposed in this paper, a
system based on neural network is summarized text maker.
In the proposed system, the original sentences based on
features such as similarity with title and similarities with the
center of the text, sentence length, sentence position, positive
and negative words, valuable keywords scores receive. These
points can be extracted from the sentences in a training body.
According to the training corpus of sentences, in summaries
to be or not to be labeled manually. Neural Network Based
on these corpus, trained and finally used in the neural
network by receiving scores of sentences extracted from a
test text, decides whether it should be included in the final
summaries. Experimental results on a documents of database
Hamshahri show that the proposed system is able to with the
scale F about 0.67 summaries do.
Journal title :
International Journal of Electronics Communication and Computer Engineering
Journal title :
International Journal of Electronics Communication and Computer Engineering