IIIDYT at IEST 2018: Implicit Emotion Classification With Deep Contextualized Word Representations (1808.08672v2)
Abstract: In this paper we describe our system designed for the WASSA 2018 Implicit Emotion Shared Task (IEST), which obtained 2${\text{nd}}$ place out of 26 teams with a test macro F1 score of $0.710$. The system is composed of a single pre-trained ELMo layer for encoding words, a Bidirectional Long-Short Memory Network BiLSTM for enriching word representations with context, a max-pooling operation for creating sentence representations from said word vectors, and a Dense Layer for projecting the sentence representations into label space. Our official submission was obtained by ensembling 6 of these models initialized with different random seeds. The code for replicating this paper is available at https://github.com/jabalazs/implicit_emotion.
- Jorge A. Balazs (7 papers)
- Edison Marrese-Taylor (29 papers)
- Yutaka Matsuo (129 papers)