Publication | Open Access
Leveraging Title-Abstract Attentive Semantics for Paper Recommendation
24
Citations
17
References
2020
Year
Paper RecommendationStructured PredictionEngineeringIntelligent Information RetrievalPersonalized PapersMemory NetworkRecurrent Neural NetworkText MiningNatural Language ProcessingInformation RetrievalData ScienceComputational LinguisticsRelevance FeedbackLanguage StudiesMachine TranslationSequence ModellingNlp TaskKnowledge DiscoveryDeep LearningRetrieval Augmented GenerationLinguistics
Paper recommendation is a research topic to provide users with personalized papers of interest. However, most existing approaches equally treat title and abstract as the input to learn the representation of a paper, ignoring their semantic relationship. In this paper, we regard the abstract as a sequence of sentences, and propose a two-level attentive neural network to capture: (1) the ability of each word within a sentence to reflect if it is semantically close to the words within the title. (2) the extent of each sentence in the abstract relative to the title, which is often a good summarization of the abstract document. Specifically, we propose a Long-Short Term Memory (LSTM) network with attention to learn the representation of sentences, and integrate a Gated Recurrent Unit (GRU) network with a memory network to learn the long-term sequential sentence patterns of interacted papers for both user and item (paper) modeling. We conduct extensive experiments on two real datasets, and show that our approach outperforms other state-of-the-art approaches in terms of accuracy.
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