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Topic-Aware Neural Keyphrase Generation for Social Media Language

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arxiv 1906.03889 v1 pith:43NKTK3U submitted 2019-06-10 cs.CL

Topic-Aware Neural Keyphrase Generation for Social Media Language

classification cs.CL
keywords mediasocialgenerationkeyphraselanguagemodelkeyphraseslatent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A huge volume of user-generated content is daily produced on social media. To facilitate automatic language understanding, we study keyphrase prediction, distilling salient information from massive posts. While most existing methods extract words from source posts to form keyphrases, we propose a sequence-to-sequence (seq2seq) based neural keyphrase generation framework, enabling absent keyphrases to be created. Moreover, our model, being topic-aware, allows joint modeling of corpus-level latent topic representations, which helps alleviate the data sparsity that widely exhibited in social media language. Experiments on three datasets collected from English and Chinese social media platforms show that our model significantly outperforms both extraction and generation models that do not exploit latent topics. Further discussions show that our model learns meaningful topics, which interprets its superiority in social media keyphrase generation.

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