Yanghua Xiao
Fudan University
151 Papers
473 Citations
Yanghua Xiao is an academic researcher from Fudan University. The author has contributed to research in topics: Computer science & Relationship extraction. The author has an hindex of 23, co-authored 142 publications. Previous affiliations of Yanghua Xiao include Tencent.
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Papers
Semantic-Based Recommendation Across Heterogeneous Domains
Deqing Yang,Yanghua Xiao,Yangqiu Song,Wei Wang +3 more
- 14 Nov 2015
TL;DR: This work proposed an optimized local tag propagation algorithm to generate descriptive tags for user profiling and proposed a semantic relatedness metric by mapping the heterogenous features onto their concept space derived from online encyclopedias.
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InSRL: A Multi-view Learning Framework Fusing Multiple Information Sources for Distantly-supervised Relation Extraction.
TL;DR: This paper introduces two widely-existing sources in knowledge bases, namely entity descriptions, and multi-grained entity types to enrich the distantly supervised data, and sees information sources as multiple views and fusing them to construct an intact space with sufficient information.
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Collective Loss Function for Positive and Unlabeled Learning.
TL;DR: A Collectively loss function to learn from only Positive and Unlabeled data (cPU) is proposed and the results show that cPU consistently outperforms the current state-of-the-art PU learning methods.
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LOREN: Logic Enhanced Neural Reasoning for Fact Verification.
TL;DR: The proposed LOREN is a novel approach for fact verification that integrates both LOgic guided REasoning and Neural inference and calculates the confidence of every single hypothesis using neural networks in the embedding space.
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A Question-answering Based Framework for Relation Extraction Validation.
TL;DR: This paper proposed a question-answering based framework to validate the results of relation extraction models, which can be easily applied to existing relation classifiers without any additional information, and observe consistent improvements over five strong baselines.
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