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Papers/Using millions of emoji occurrences to learn any-domain re...

Using millions of emoji occurrences to learn any-domain representations for detecting sentiment, emotion and sarcasm

Bjarke Felbo, Alan Mislove, Anders Søgaard, Iyad Rahwan, Sune Lehmann

2017-08-01EMNLP 2017 9Sentiment AnalysisTransfer LearningSarcasm Detection
PaperPDFCodeCodeCode(official)CodeCodeCodeCode

Abstract

NLP tasks are often limited by scarcity of manually annotated data. In social media sentiment analysis and related tasks, researchers have therefore used binarized emoticons and specific hashtags as forms of distant supervision. Our paper shows that by extending the distant supervision to a more diverse set of noisy labels, the models can learn richer representations. Through emoji prediction on a dataset of 1246 million tweets containing one of 64 common emojis we obtain state-of-the-art performance on 8 benchmark datasets within sentiment, emotion and sarcasm detection using a single pretrained model. Our analyses confirm that the diversity of our emotional labels yield a performance improvement over previous distant supervision approaches.

Results

TaskDatasetMetricValueModel
Sentiment Analysis1B Words1 in 10 R@117Random
Sentiment AnalysisMRTraining Time1500Millions of Emoji

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