Title
Unsupervised Keyword Extraction Using The Gow Model And Centrality Scores
Abstract
Nowadays, a large amount of text documents are produced on a daily basis, so we need efficient and effective access to their content. News articles, blogs and technical reports are often lengthy, so the reader needs a quick overview of the underlying content. To that end we present graph-based models for keyword extraction, in order to compare the Bag of Words model with the Graph of Words model in the keyword extraction problem. We compare their performance in two publicly available datasets using the evaluation measures Precision@10, mean Average Precision and Jaccard coefficient. The methods we have selected for comparison are grouped into two main categories. On the one hand, centrality measures on the formulated Graph-of-Words (GoW) are able to rank all words in a document from the most central to the less central, according to their score in the GoW representation. On the other hand, community detection algorithms on the GoW provide the largest community that contains the key nodes (words) in the GoW. We selected these methods as the most prominent methods to identify central nodes in a GoW model. We conclude that term-frequency scores (BoW model) are useful only in the case of less structured text, while in more structured text documents, the order of words plays a key role and graph-based models are superior to the term-frequency scores per document.
Year
DOI
Venue
2017
10.1007/978-3-319-70284-1_26
INTERNET SCIENCE
Keywords
DocType
Volume
Keyword-based search, Topic-based filtering, Graph-based models, Graph of words, Centrality measures, Community detection
Conference
10673
ISSN
Citations 
PageRank 
0302-9743
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Elissavet Batziou100.34
Ilias Gialampoukidis21210.41
Stefanos Vrochidis326373.19
Ioannis Antoniou46012.93
Ioannis Kompatsiaris51404197.36