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A graph based keyword extraction model using collective node weight - 2018

A graph based keyword extraction model using collective node weight

Research paper on A graph based keyword extraction model using collective node weight

Research Area:  Machine Learning

Abstract:

In the recent times, a huge amount of text is being generated for social purposes on twitter social networking site. Summarizing and analysing of twitter content is an important task as it benefits many applications such as information retrieval, automatic indexing, automatic classification, automatic clustering, automatic filtering etc. One of the most important tasks in analyzing tweets is automatic keyword extraction. There are some graph based approaches for keyword extraction which determine keywords only based on centrality measure. However, the importance of a keyword in twitter depends on various parameters such as frequency, centrality, position and strength of neighbors of the keyword. Therefore, this paper proposes a novel unsupervised graph based keyword extraction method called Keyword Extraction using Collective Node Weight (KECNW) which determines the importance of a keyword by collectively taking various influencing parameters. The KECNW is based on Node Edge rank centrality with node weight depending on various parameters. The model is validated with five datasets: Uri Attack, American Election, Harry Potter, IPL and Donald Trump. The result of KECMW is compared with three existing models. It is observed from the experimental results that the proposed method is far better than the others. The performances are shown in terms of precision, recall and F-measure.

Keywords:  
Graph based keyword extraction model
collective node weight
Automatic classification
Automatic clustering
Automatic filtering
Machine Learning
Deep Learning

Author(s) Name:  Saroj Kr. Biswas, Monali Bordoloi, Jacob Shreya

Journal name:   Expert Systems with Applications

Conferrence name:  

Publisher name:  Elsevier

DOI:  10.1016/j.eswa.2017.12.025

Volume Information:  Volume 97, 1 May 2018, Pages 51-59