SNU IDS at SemEval-2019 Task 3: Addressing Training-Test Class Distribution Mismatch in Conversational Classification

SEMEVAL 2019  ·  Sanghwan Bae, Jihun Choi, Sang-goo Lee ·

We present several techniques to tackle the mismatch in class distributions between training and test data in the Contextual Emotion Detection task of SemEval 2019, by extending the existing methods for class imbalance problem. Reducing the distance between the distribution of prediction and ground truth, they consistently show positive effects on the performance. Also we propose a novel neural architecture which utilizes representation of overall context as well as of each utterance. The combination of the methods and the models achieved micro F1 score of about 0.766 on the final evaluation.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Emotion Recognition in Conversation EC Oversampling Micro-F1 0.758 # 6

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