Corpus ID: 3763511

Expert Finding in Heterogeneous Bibliographic Networks with Locally-trained Embeddings

@article{Gui2018ExpertFI,
  title={Expert Finding in Heterogeneous Bibliographic Networks with Locally-trained Embeddings},
  author={Huan Gui and Qi Zhu and Liyuan Liu and A. Zhang and Jiawei Han},
  journal={ArXiv},
  year={2018},
  volume={abs/1803.03370}
}
  • Huan Gui, Qi Zhu, +2 authors Jiawei Han
  • Published 2018
  • Computer Science
  • ArXiv
  • Expert finding is an important task in both industry and academia. It is challenging to rank candidates with appropriate expertise for various queries. In addition, different types of objects interact with one another, which naturally forms heterogeneous information networks. We study the task of expert finding in heterogeneous bibliographical networks based on two aspects: textual content analysis and authority ranking. Regarding the textual content analysis, we propose a new method for query… CONTINUE READING
    6 Citations

    Figures, Tables, and Topics from this paper

    NetTaxo: Automated Topic Taxonomy Construction from Text-Rich Network
    • 4
    • PDF
    TaxoGen: Unsupervised Topic Taxonomy Construction by Adaptive Term Embedding and Clustering
    • 37
    • PDF
    Expert2Vec: Experts Representation in Community Question Answering for Question Routing
    • 9
    • PDF
    A Pattern-Based Academic Reviewer Recommendation Combining Author-Paper and Diversity Metrics
    • 5
    • PDF
    Academic Expert Finding in Indonesia using Word Embedding and Document Embedding: A Case Study of Fasilkom UI
    • T. V. Rampisela, Evi Yulianti
    • Computer Science
    • 2020 8th International Conference on Information and Communication Technology (ICoICT)
    • 2020
    • 1
    Semantic-Based Query Expansion for Academic Expert Finding

    References

    SHOWING 1-10 OF 34 REFERENCES
    Modeling and exploiting heterogeneous bibliographic networks for expertise ranking
    • 54
    • PDF
    Formal Models for Expert Finding on DBLP Bibliography Data
    • 153
    • Highly Influential
    • PDF
    Ranking-based classification of heterogeneous information networks
    • 165
    • PDF
    RankClus: integrating clustering with ranking for heterogeneous information network analysis
    • 358
    • PDF
    Telling experts from spammers: expertise ranking in folksonomies
    • 84
    • PDF
    Co-ranking Authors and Documents in a Heterogeneous Network
    • 232
    • PDF
    Expertise Retrieval
    • 177
    • PDF
    Ranking-based clustering of heterogeneous information networks with star network schema
    • 450
    • PDF
    Probabilistic Models for Expert Finding
    • 220
    • PDF
    Learning to recognize reliable users and content in social media with coupled mutual reinforcement
    • 183
    • PDF