Graph-based Semantical Extractive Text Analysis
Mina Samizadeh

TL;DR
This paper enhances the TextRank algorithm for text analysis by integrating semantic similarity, improving keyword extraction and summarization, and introduces a topic clustering method to address coverage issues.
Contribution
It introduces a novel graph-based semantic similarity integration into TextRank and develops a topic clustering algorithm for better text understanding.
Findings
Improved keyword extraction accuracy
Enhanced text summarization quality
Effective topic clustering results
Abstract
In the past few decades, there has been an explosion in the amount of available data produced from various sources with different topics. The availability of this enormous data necessitates us to adopt effective computational tools to explore the data. This leads to an intense growing interest in the research community to develop computational methods focused on processing this text data. A line of study focused on condensing the text so that we are able to get a higher level of understanding in a shorter time. The two important tasks to do this are keyword extraction and text summarization. In keyword extraction, we are interested in finding the key important words from a text. This makes us familiar with the general topic of a text. In text summarization, we are interested in producing a short-length text which includes important information about the document. The TextRank algorithm,…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Service-Oriented Architecture and Web Services · Topic Modeling
MethodsBalanced Selection
