Mohamad Abdolahi

Work place: Kharazmi International Campus Shahrood University Shahrood, Iran

E-mail: mabdolahi512@yahoo.com

Website:

Research Interests: Image Compression, Image Manipulation, Image Processing, Data Mining, Data Structures and Algorithms

Biography

Mohamad Abdolahi was born in Mashhad, Iran, on October 22, 1964, Thursday. He is Ph.D. candidate in Shahrood University of Technology in the field of computer engineering - artificial intelligence. His is lecturer in Iranian Academic Center for Education, Culture and Research (ACECR), Mashhad, Iran. His special fields of interest are NLP, data mining, image processing and machine learning.

Author Articles
Textual Coherence Improvement of Extractive Document Summarization Using Greedy Approach and Word Vectors

By Mohamad Abdolahi Morteza Zahedi

DOI: https://doi.org/10.5815/ijmecs.2019.04.03, Pub. Date: 8 Apr. 2019

There is a growing body of attention to importance of document summarization in most NLP tasks. So far, full coverage information, coherence of output sentences and lack of similar sentences (non-redundancy) are the main challenges faced to many experiments in compacted summaries. Although some research has been carried out on compact summaries, there have been few empirical investigations into coherence of output sentences. The aim of this essay is to explore a comprehensive and useful methodology to generate coherent summaries. The methodological approach taken in this study is a mixed method based on most likely n-grams and word2vec algorithm to convert separated sentences into numeric and normalized matrices. This paper attempts to extract statistical properties from numeric matrices. Using a greedy approach, the most relevant sentences to main document subject are selected and placed in the output summary. The proposed greedy method is our backbone algorithm, which utilizes a repeatable algorithm, maximizes two features of conceptual coherence and subject matter diversity in the summary. Suggested approach compares its result to similar model Q_Network and shows the superiority of its algorithm in confronting with long text document.

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