Learning higher-level features with convolutional restricted Boltzmann machines for sentiment analysis
Contribuinte(s) |
Hanbury, Allan Kazai, Gabriella Rauber, Andreas Fuhr, Norbert |
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Data(s) |
2015
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Resumo |
In recent years, learning word vector representations has attracted much interest in Natural Language Processing. Word representations or embeddings learned using unsupervised methods help addressing the problem of traditional bag-of-word approaches which fail to capture contextual semantics. In this paper we go beyond the vector representations at the word level and propose a novel framework that learns higher-level feature representations of n-grams, phrases and sentences using a deep neural network built from stacked Convolutional Restricted Boltzmann Machines (CRBMs). These representations have been shown to map syntactically and semantically related n-grams to closeby locations in the hidden feature space. We have experimented to additionally incorporate these higher-level features into supervised classifier training for two sentiment analysis tasks: subjectivity classification and sentiment classification. Our results have demonstrated the success of our proposed framework with 4% improvement in accuracy observed for subjectivity classification and improved the results achieved for sentiment classification over models trained without our higher level features. |
Formato |
application/pdf |
Identificador |
Huynh, Trung; He, Yulan and Rüger, Stefan (2015). Learning higher-level features with convolutional restricted Boltzmann machines for sentiment analysis. IN: Advances in information retrieval. Hanbury, Allan; Kazai, Gabriella; Rauber, Andreas and Fuhr, Norbert (eds) Lecture notes in computer science . Cham (CH): Springer. |
Publicador |
Springer |
Relação |
http://eprints.aston.ac.uk/25395/ |
Tipo |
Book Section NonPeerReviewed |