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EmotionX-DLC: Self-Attentive BiLSTM for Detecting Sequential Emotions in Dialogue

19 June 2018
Linkai Luo
Haiqing Yang
Francis Y. L. Chin
ArXiv (abs)PDFHTML
Abstract

In this paper, we propose a self-attentive bidirectional long short-term memory (SA-BiLSTM) network to predict multiple emotions for the EmotionX challenge. The BiLSTM exhibits the power of modeling the word dependencies, and extracting the most relevant features for emotion classification. Building on top of BiLSTM, the self-attentive network can model the contextual dependencies between utterances which are helpful for classifying the ambiguous emotions. We achieve 59.6 and 55.0 unweighted accuracy scores in the \textit{Friends} and the \textit{EmotionPush} test sets, respectively.

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