Frank F. Xu
Shanghai Jiao Tong University
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Publication
Featured researches published by Frank F. Xu.
empirical methods in natural language processing | 2017
Bill Yuchen Lin; Frank F. Xu; Zhiyi Luo; Kenny Q. Zhu
In this paper, we present our multi-channel neural architecture for recognizing emerging named entity in social media messages, which we applied in the Novel and Emerging Named Entity Recognition shared task at the EMNLP 2017 Workshop on Noisy User-generated Text (W-NUT). We propose a novel approach, which incorporates comprehensive word representations with multi-channel information and Conditional Random Fields (CRF) into a traditional Bidirectional Long Short-Term Memory (BiLSTM) neural network without using any additional hand-craft features such as gazetteers. In comparison with other systems participating in the shared task, our system won the 2nd place.
arXiv: Computation and Language | 2018
Qi Zhu; Xiang Ren; Jingbo Shang; Yu Zhang; Frank F. Xu; Jiawei Han
Extracting entities and their relations from text is an important task for understanding massive text corpora. Open information extraction (IE) systems mine relation tuples (i.e., entity arguments and a predicate string to describe their relation) from sentences. However, current open IE systems ignore the fact that global statistics in a large corpus can be collectively leveraged to identify high-quality sentence-level extractions. In this paper, we propose a novel open IE system, called ReMine, which integrates local context signal and global structural signal in a unified framework with distant supervision. The new system can be efficiently applied to different domains as it uses facts from external knowledge bases as supervision; and can effectively score sentence-level tuple extractions based on corpus-level statistics. Specifically, we design a joint optimization problem to unify (1) segmenting entity/relation phrases in individual sentences based on local context; and (2) measuring the quality of sentence-level extractions with a translating-based objective. Experiments on real-world corpora from different domains demonstrate the effectiveness and robustness of ReMine when compared to other open IE systems.
national conference on artificial intelligence | 2018
Liyuan Liu; Jingbo Shang; Frank F. Xu; Xiang Ren; Huan Gui; Jian Peng; Jiawei Han
web search and data mining | 2018
Zeqiu Wu; Xiang Ren; Frank F. Xu; Ji Li; Jiawei Han
national conference on artificial intelligence | 2018
Bill Yuchen Lin; Frank F. Xu; Eve Q. Liao; Kenny Q. Zhu
meeting of the association for computational linguistics | 2018
Frank F. Xu; Yuchen Lin; Kenny Q. Zhu
meeting of the association for computational linguistics | 2018
Yuchen Lin; Frank F. Xu; Kenny Q. Zhu; Seung-won Hwang
meeting of the association for computational linguistics | 2018
Frank F. Xu; Bill Yuchen Lin; Kenny Q. Zhu
empirical methods in natural language processing | 2018
Zhiyi Luo; Shanshan Huang; Frank F. Xu; Bill Yuchen Lin; Hanyuan Shi; Kenny Q. Zhu
arXiv: Computation and Language | 2018
Qi Zhu; Xiang Ren; Jingbo Shang; Yu Zhang; Frank F. Xu; Jiawei Han