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Publications by Xu, Yan

In Journal (refereed)

1. Y. Xu, G. Li, L. Mou, Y. Lu. "Learning non-taxomomic relations on demand for ontology extension". International Journal of Software Engineering and Knowledge Engineering, 24(8), pp 1159–1175, October 2014. view

In Conference (refereed)

2. Y. Xu, R. Jia, L. Mou, G. Li, Y. Chen, Y. Lu, Z. Jin. "Improved relation classification by deep recurrent neural networks with data augmentation". Conference on Computational Linguistics (COLING), pp 1461–1470, December 2016. PDFview
3. L. Mou, Z. Meng, R. Yan, G. Li, Y. Xu, L. Zhang, Z. Jin. "How Transferable are Neural Networks in NLP Applications?". EMNLP - Conference on Empirical Methods in Natural Language Processing, Austin, USA, pp 479–489, November 2016. PDFview
4. L. Mou, R. Jia, Y. Xu, G. Li, L. Zhang, Z. Jin. "Distilling Word Embeddings: An Encoding Approach". ACM International Conference on Information and Knowledge Management (CIKM), pp 1977–1980, October 2016. PDFview
5. Y. Chen, L. Mou, Y. Xu, G. Li, Z. Jin. "Compressing Neural Language Models by Sparse Word Representations". International Conference on Computational Linguistics and the Association for Computational Linguist, pp 226–235, August 2016. view
6. L. Mou, R. Men, G. Li, Y. Xu, L. Zhang, R. Yan, Z. Jin. "Natural Language Inference by Tree-Based Convolution and Heuristic Matching". International Conference on Computational Linguistics and the Association for Computational Linguist, pp 130–136, August 2016. PDFview
7. H. Peng, L. Mou, G. Li, Y. Liu, Z. Jin, Y. Xu, L. Zhang. "Building Program Vector Representations for Deep Learning". International Conference on Knowledge Science, Engineering and Management, (ed: Songmao Zhang, Martin Wirsing, Zili Zhang ), pp 547-553, October 2015. view
8. L. Mou, H. Peng, G. Li, Y. Xu, L. Zhang, Z. Jin. "Discriminative Neural Sentence Modeling by Tree-Based Convolution". EMNLP - Conference on Empirical Methods in Natural Language Processing, pp 2315–2325, September 2015. PDFview
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