Predicting Human Metaphor Paraphrase Judgments with Deep Neural Networks
2018-06-01WS 2018Unverified0· sign in to hype
Yuri Bizzoni, Shalom Lappin
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ReproduceAbstract
We propose a new annotated corpus for metaphor interpretation by paraphrase, and a novel DNN model for performing this task. Our corpus consists of 200 sets of 5 sentences, with each set containing one reference metaphorical sentence, and four ranked candidate paraphrases. Our model is trained for a binary classification of paraphrase candidates, and then used to predict graded paraphrase acceptability. It reaches an encouraging 75\% accuracy on the binary classification task, and high Pearson (.75) and Spearman (.68) correlations on the gradient judgment prediction task.