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UDLAP at SemEval-2016 Task 4: Sentiment Quantification Using a Graph Based Representation

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dc.contributor ;
dc.contributor.advisor ,
dc.contributor.author CASTILLO JUAREZ, ESTEBAN
dc.creator ESTEBAN CASTILLO JUAREZ;373269
dc.date.accessioned 2018-06-01T14:36:55Z
dc.date.available 2018-06-01T14:36:55Z
dc.date.issued 2018-01-01
dc.identifier.uri http://repositorio.udlap.mx/xmlui/handle/123456789/8615
dc.description UDLAP
dc.description.abstract We present an approach for tackling the tweet quantification problem in SemEval 2016. The approach is based on the creation of a co-occurrence graph per sentiment from the training dataset and a graph per topic from the test dataset with the aim of comparing each topic graph against the sentiment graphs and evaluate the similarity between them. A heuristic is applied on those similarities to calculate the percentage of positive and negative texts. The overall result obtained for the test dataset according to the proposed task score (KL divergence) is 0.261, showing that the graph based representation and heuristic could be a way of quantifying the percentage of tweets that are positive and negative in a given set of texts about a topic.
dc.description.abstract We present an approach for tackling the tweet quantification problem in SemEval 2016. The approach is based on the creation of a co-occurrence graph per sentiment from the training dataset and a graph per topic from the test dataset with the aim of comparing each topic graph against the sentiment graphs and evaluate the similarity between them. A heuristic is applied on those similarities to calculate the percentage of positive and negative texts. The overall result obtained for the test dataset according to the proposed task score (KL divergence) is 0.261, showing that the graph based representation and heuristic could be a way of quantifying the percentage of tweets that are positive and negative in a given set of texts about a topic.
dc.language Español
dc.publisher
dc.rights openAccess
dc.rights CC0
dc.source
dc.subject 2
dc.subject 1
dc.subject palabras
dc.subject administrators
dc.subject librarians
dc.title UDLAP at SemEval-2016 Task 4: Sentiment Quantification Using a Graph Based Representation
dc.type annotation
dc.type Versión del autor


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