Abstract
Keyword/keyphrase extraction is an important research activity in text mining, natural language processing, and information retrieval. A large number of algorithms, divided into supervised or unsupervised methods, have been designed and developed to solve the problem of automatic keyphrases extraction. The aim of the chapter is to critically discuss the unsupervised automatic keyphrases extraction algorithms, analyzing in depth their characteristics. The methods presented will be tested on different datasets, presenting in detail the data, the algorithms, and the different options tested in the runs. Moreover, most of the studies and experiments have been conducted on texts in English, while there are few experiments concerning other languages, such as Italian. Particular attention will be paid to the evaluation of the results of the methods in two different languages, English, and Italian.
Reference41 articles.
1. SemCluster: unsupervised automatic keyphrase extraction using affinity propagation.;H. H.Alrehamy;UK Workshop on Computational Intelligence,2017
2. Cataloging Intangible Cultural Heritage on the Web
3. Browsing and searching UNESCO intangible heritage on the web: Two ways
4. What is this painting about? Experiments on Unsupervised Keyphrases Extraction algorithms
5. Accurate dependency parsing with a stacked multilayer perceptron.;G.Attardi;Proceedings of EVALITA,2009