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Quote Recommendation in Dialogue using Deep Neural Network

Hanbit LeeSamsung Electronics, Seoul, South KoreaYeonchan AhnSeoul National University, Seoul, South KoreaHaejun LeeSamsung Electronics, Seoul, South KoreaSeungdo HaSeoul National University, Seoul, South KoreaSang-goo LeeSeoul National University, Seoul, South Korea
2016en
ABI

Аннотация

Quotes, or quotations, are well known phrases or sentences that we use for various purposes such as emphasis, elaboration, and humor. In this paper, we introduce a task of recommending quotes which are suitable for given dialogue context and we present a deep learning recommender system which combines recurrent neural network and convolutional neural network in order to learn semantic representation of each utterance and construct a sequence model for the dialog thread. We collected a large set of twitter dialogues with quote occurrences in order to evaluate proposed recommender system. Experimental results show that our approach outperforms not only the other state-of-the-art algorithms in quote recommendation task, but also other neural network based methods built for similar tasks.

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