Explorations into Deep Neural Models for Emotion Recognition

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Abstract

Deep emotion recognition is the central objective of our recent research efforts. This study examines the capability of several deep learning architectures and word embeddings to classify emotions on two Twitter datasets. We have identified several aspects worth investigating that appeared to challenge and contrast previously established notion that semantic information is captured by distributional word representations. Our evidence has shown that extending the word embeddings to account for the use of emojis and incorporating a suitable lexicon of emotional words can lead to a better classification of the emotional content carried by Twitter messages.

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Stojanovska, F., Toshevska, M., & Gievska, S. (2018). Explorations into Deep Neural Models for Emotion Recognition. In Communications in Computer and Information Science (Vol. 940, pp. 217–232). Springer Verlag. https://doi.org/10.1007/978-3-030-00825-3_19

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