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SM ISO690:2012 GROZAVU, Nistor. Opinion mining based on unsupervised machine learning . In: Microelectronics and Computer Science, Ed. 9, 19-21 octombrie 2017, Chisinau. Chișinău, Republica Moldova: Universitatea Tehnică a Moldovei, 2017, Ediția 9, pp. 198-201. ISBN 978-9975-4264-8-0. |
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Microelectronics and Computer Science Ediția 9, 2017 |
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Conferința "Microelectronics and Computer Science" 9, Chisinau, Moldova, 19-21 octombrie 2017 | ||||||
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Pag. 198-201 | ||||||
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Opinion Mining is the field of computational study of people's emotional behavior expressed in text. The purpose of this article is to introduce a new framework for characterization of the groups of opinions extracted from tweet data. In contrast to supervised learning, the problem of clustering characterization in the context of opinion mining based on unsupervised learning is challenging, because label information is not available. The proposed framework u ses topological unsupervised learning and hierarchical clustering, each cluster being associated to a prototype and a weight vector, reflecting the relevance of the data belonging to each cluster. The proposed framework requires simple computational techniques and is based on the double local weighting self-organizing map (dlw-SOM) model and Hierarchical Clu stering. |
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Cuvinte-cheie emotions mining, clustering, Twitter, topological learning, feature weighting |
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