Ghazi, M., Abdulmunim, M. (2022). Convolutional Recurrent Neural Networks for Text Lecture Summarization. , 22(2), 27-39. doi: 10.33103/uot.ijccce.22.2.3
Muna Ghazi; Matheel Abdulmunim. "Convolutional Recurrent Neural Networks for Text Lecture Summarization". , 22, 2, 2022, 27-39. doi: 10.33103/uot.ijccce.22.2.3
Ghazi, M., Abdulmunim, M. (2022). 'Convolutional Recurrent Neural Networks for Text Lecture Summarization', , 22(2), pp. 27-39. doi: 10.33103/uot.ijccce.22.2.3
Ghazi, M., Abdulmunim, M. Convolutional Recurrent Neural Networks for Text Lecture Summarization. , 2022; 22(2): 27-39. doi: 10.33103/uot.ijccce.22.2.3
Convolutional Recurrent Neural Networks for Text Lecture Summarization
IRAQI JOURNAL OF COMPUTERS, COMMUNICATIONS, CONTROL AND SYSTEMS ENGINEERING
1Department of computer sciences, University of Technology, Baghdad, Iraq.
2Department of computer sciences, University of Technology, Baghdad, Iraq
Abstract
Text summarization can be utilized for variety type of purposes; one of them for summary lecture file. A long document expended long time and large capacity. Since it may contain duplicated information, more over, irrelevant details that take long period to access relevant information. Summarization is a technique which provides the primary points of the whole document, and in the same time it will indicates the majority of the information in a small amount of time. For this reason it can save user time, decrease storage, and increase transfer speed to transmit through the internet. The summarization process will eliminate duplicated data, unimportant information, and also replace complex expression with simpler expression. The proposed method is using convolutional recurrent neural network deep model as a method for abstractive text summarization of lecture file that will be great helpful to students to address lecture notes. This method proposes a novel encoder-decoder deep model including two deep model networks which are convolutional and recurrent. The encoder part which consists of two convolutional layers followed by three recurrent layers of type bidirectional long short term memory. The decoder part which consists of one recurrent layer of type long short term memory. And also using attention mechanism layer. The proposed method training using standard CNN/Daily Mail dataset that achieved 92.90% accuracy.