前往小程序,Get更优阅读体验!
立即前往
首页
学习
活动
专区
工具
TVP
发布
社区首页 >专栏 >【专知荟萃03】知识图谱KG知识资料全集(入门/进阶/论文/代码/数据/综述/专家等)(附pdf下载)

【专知荟萃03】知识图谱KG知识资料全集(入门/进阶/论文/代码/数据/综述/专家等)(附pdf下载)

作者头像
WZEARW
发布2018-04-09 15:47:22
3K0
发布2018-04-09 15:47:22
举报
文章被收录于专栏:专知专知

【导读】主题荟萃知识是专知的核心功能之一,为用户提供AI领域系统性的知识学习服务。主题荟萃为用户提供全网关于该主题的精华(Awesome)知识资料收录整理,使得AI从业者便捷学习和解决工作问题!在专知人工智能主题知识树基础上,主题荟萃由专业人工编辑和算法工具辅助协作完成,并保持动态更新!另外欢迎对此创作主题荟萃感兴趣的同学,请加入我们专知AI创作者计划,共创共赢! 今天专知为大家呈送第三篇专知主题荟萃-知识图谱知识资料全集荟萃 (入门/进阶/论文/代码/数据/专家等),请大家查看!专知访问www.zhuanzhi.ai, 或关注微信公众号后台回复" 专知"进入专知,搜索主题“深度学习”查看。欢迎转发分享!此外,我们也提供该文pdf下载链接,请文章末尾查看!

  • 知识图谱 (Knowledge Graph) 专知 荟萃
    • 入门学习
    • 进阶论文
    • Tutorial
    • 综述
    • 视频教程
    • 代码
    • 领域专家

知识图谱 (Knowledge Graph) 专知 荟萃

入门学习

  1. 大规模知识图谱技术 王昊奋 华东理工大学 [http://history.ccf.org.cn/sites/ccf/xhdtnry.jsp?contentId=2794147245202] [https://pan.baidu.com/s/1i5w2RcD]
  2. 知识图谱技术原理介绍 王昊奋 [http://www.36dsj.com/archives/39306]
  3. 大规模知识图谱的表示学习及其应用 刘知远 [http://www.cipsc.org.cn/kg3/]
  4. 知识图谱的知识表现方法回顾与展望 鲍捷 [http://www.cipsc.org.cn/kg3/]
  5. 基于翻译模型(Trans系列)的知识表示学习 paperweekly [http://www.sohu.com/a/116866488_465975\]
  6. 中文知识图谱构建方法研究1,2,3 [http://blog.csdn.net/zhangqiang1104/article/details/50212227] [http://blog.csdn.net/zhangqiang1104/article/details/50212261] [http://blog.csdn.net/zhangqiang1104/article/details/50212341]
  7. TransE算法(Translating Embedding) [http://blog.csdn.net/u011274209/article/details/50991385]
  8. OpenKE 刘知远 清华大学 知识表示学习(Knowledge Embedding)旨在将知识图谱中实体与关系嵌入到低维向量空间中,有效提升知识计算效率。 [ http://openke.thunlp.org/]
  9. 面向大规模知识图谱的表示学习技术 刘知远 [http://www.cbdio.com/BigData/2016-03/03/content_4675344.htm]
  10. 当知识图谱“遇见”深度学习 肖仰华 [http://caai.cn/index.php?s=/Home/Article/qikandetail/year/2017/month/04.html]
  11. NLP与知识图谱的对接 白硕 [http://caai.cn/index.php?s=/Home/Article/qikandetail/year/2017/month/04.html]
  12. 【干货】最全知识图谱综述#1: 概念以及构建技术 专知
  13. 知识图谱综述: 构建技术与典型应用 专知

进阶论文

  1. sowa J F. Principles of semantic networks: Exploration in the representation of Knowledge[J]. Frame Problem in Artificial Intelligence, 1991(2-3):135–157. [https://www.researchgate.net/publication/230854809_Principles_of_Semantic_Networks_Exploration_in_the_Representation_of_Knowledge]
  2. Brachman R J, Borgida A, Mcguinness D L, et al. " Reducing" CLASSIC to Practice: Knowledge representation theory Meets reality[c]// conceptual Modeling: Foundations and applications. springerVerlag. 2009:436-465. [http://www.sciencedirect.com/science/article/pii/S0004370299000788]
  3. Berners-Lee T, Hendler J, Lassila O. The semantic Web: A new Form of Web content that is Meaningful to computers will Unleash a revolution of New Possibilities[J]. Scientific American, 2001, 284(5):34-43. [http://xitizap.com/semantic-web.pdf]
  4. Guodong Z, Jian S, Jie Z, et al. Exploring Various Knowledge in relation Extraction.[c]// ACL 2005, Meeting of the Association for Computational Linguistics, Proceedings of the Conference, 2530 June, 2005, University of Michigan, USA. DBLP. 2005:419-444. [https://dl.acm.org/citation.cfm?id=1219893]
  5. Hashimoto K, Stenetorp P, Miwa M, et al. Taskoriented learning of Word Embeddings for semantic Relation Classification[J], Computer Science, 2015:268-278. [http://arxiv.org/abs/1503.00095]
  6. Miwa M, Sasaki Y. Modeling Joint Entity and Relation Extraction with table R epresentation[ C ]// C onference on Empirical Methods in N atural Language Processing. 2014:944-948. [http://www.anthology.aclweb.org/D/D14/D14-1200.pdf]
  7. Li Q, Ji H. Incremental Joint Extraction of Entity Mentions and relations[c]// annual Meeting of the Association for Computational Linguistics. 2014:402-412. [http://www.anthology.aclweb.org/P/P14/P14-1038.pdf]
  8. Kate R J, Mooney R J. Joint Entity and relation Extraction using card-pyramid Parsing[c]// C onference on C omputational N atural L anguage learning. 2010:203-212. [http://www.cse.fau.edu/~xqzhu/courses/cap6777/Joint.Named.Entity.kate.conll10.pdf]
  9. Miwa M, Bansal M. End-to-End Relation Extraction using LSTMs on S equences and tree structures[c]// annual Meeting of the association for computational linguistics. 2016:1105-1116. [https://arxiv.org/abs/1601.00770]
  10. brin s. Extracting Patterns and relations from the World Wide Web[J]. lecture notes in computer Science, 1998, 1590:172-183 [Extracting Patterns and relations from the World Wide Web]
  11. Carlson A, Betteridge J, Kisiel B, et al. Toward an architecture for N ever-Ending language learning. [ C ]// twenty-Fourth AAAI C onference on A rtificial Intelligence, AAAI 2010, Atlanta, Georgia, Usa, July. DBLP, 2010:529-573. [https://www.aaai.org/ocs/index.php/AAAI/AAAI10/paper/view/1879]
  12. Mitchell T, Fredkin E. Never-ending Language L earning[M]// N ever-Ending L anguage L earning. Alphascript Publishing, 2014. [http://www.ischool.drexel.edu/bigdata/bigdata2014/NELL_Mitchell_IEEE_Oct2014_distr.pdf]
  13. Wang H, Fang Z, Zhang L, et al. Effective Online Knowledge Graph Fusion[M]// the semantic Web ISWC 2015. Springer International Publishing, 2015: 286-302. [http://iswc2015.semanticweb.org/sites/iswc2015.semanticweb.org/files/93660257.pdf]
  14. Otero-Cerdeira L, Rodríguez-Martínez F J, Gómez-Rodríguez A. Ontology Matching: A Literature Review[J]. Expert Systems with Applications, 2015, 42(2):949–971. [http://disi.unitn.it/~p2p/RelatedWork/Matching/Cerdeira-Ontology%20Matching-2015.pdf]
  15. Hu W, Chen J, Qu Y. A Self-training Approach for resolving object coreference on the semantic Web[ C ]// I nternational C onference on World Wide Web. ACM, 2011:87-96. [https://dl.acm.org/citation.cfm?id=1963421]
  16. Li J, Wang Z, Zhang X, et al. Large Scale instance Matching via Multiple indexes and candidate Selection[J]. Knowledge-Based Systems, 2013, 50(3):112-120. [http://disi.unitn.it/~p2p/RelatedWork/Matching/KBS13-Li-et-al-large-instance.pdf]
  17. Han X, Sun L. A Generative Entity-Mention Model for linking Entities with Knowledge base[c]// T he Meeting of the A ssociation for C omputational Linguistics: Human Language Technologies, Proceedings of the Conference, 19-24 June, 2011, Portland, Oregon, USA. DBLP, 2011:945-954. [https://dl.acm.org/citation.cfm?id=2002592]
  18. Zhang W, Sim Y C, Su J, et al. Entity Linking with Effective Acronym Expansion, Instance Selection and topic Modeling[c]// international Joint conference on Artificial Intelligence. 2011:1909-1914. [http://www.aaai.org/ocs/index.php/IJCAI/IJCAI11/paper/view/3392]
  19. Shen W, Wang J, Luo P, et al. Linking Named Entities in tweets with Knowledge Base via User Interest Modeling[ C ]// AC M SI GKDD I nternational C onference on Knowledge Discovery and Data Mining. ACM, 2013:68-76. [https://dl.acm.org/citation.cfm?id=2487686]
  20. Han X, Sun L, Zhao J. Collective Entity Linking in Web text: A Graph-based Method[c]// Proceeding of the international acM siGir conference on research and Development in Information Retrieval, SIGIR 2011, Beijing, China, July. DBLP, 2011:765-774. [https://dl.acm.org/citation.cfm?id=2010019]
  21. Alhelbawy A, Gaizauskas R. Graph Ranking for collective named Entity Disambiguation[c]// Meeting of the Association for Computational L inguistics. 2014:75-80. [http://www.anthology.aclweb.org/P/P14/P14-2013.pdf]
  22. He Z, Liu S, Li M, et al. Learning Entity representation for Entity Disambiguation[J]. annual Meeting of the A ssociation for C omputational Linguistics, 2013, (2):30-34. [http://www.doc88.com/p-9039715083540.html]
  23. Huang H, Heck L, Ji H. Leveraging Deep neural networks and Knowledge Graphs for Entity Disambiguation[J]. Computer Science, 2015:1275-1284. [http://arxiv.org/abs/1504.07678]
  24. Zhou Z, Qi G, Wu Z, et al. A Platform-Independent A pproach for Parallel Reasoning with OWLEL Ontologies Using Graph Representation[C]// IEEE, I nternational C onference on TOOLS with A rtificial Intelligence. IEEE, 2015:80-87. [http://ieeexplore.ieee.org/xpls/icp.jsp?arnumber=7372121]
  25. Nickel M, Murphy K, Tresp V, et al. A Review of relational Machine learning for Knowledge Graphs[J]. Proceedings of the IEEE, 2016, 104(1):11-33. [http://arxiv.org/abs/1503.00759]
  26. Nickel M, Tresp V, Kriegel H P. A Three-Way Model for collective learning on Multi-relational Data. [C]// International Conference on Machine Learning, ICML 2011, Bellevue, Washington, Usa, June 28 July. DBLP, 2011:809-816. [http://www.icml-2011.org/papers/438_icmlpaper.pdf]
  27. Bordes A, Weston J, Collobert R, et al. Learning structured Embeddings of Knowledge bases[c]// AAAI Conference on Artificial Intelligence, AAAI 2011, San Francisco, California, Usa, August. DBLP, 2011:301-306. [http://www.aaai.org/ocs/index.php/AAAI/AAAI11/paper/view/3659]
  28. Nickel M, Rosasco L, Poggio T. Holographic Embeddings of Knowledge Graphs[J]// AAAI Conference on Artificial Intelligence. 2016:1955-1961. [http://arxiv.org/abs/1510.04935]
  29. Galárraga L, Teflioudi C, Hose K, et al. Fast Rule Mining in ontological Knowledge bases with aMiE+[J]. The VLDB Journal, 2015, 24(6):707-730. [https://dl.acm.org/citation.cfm?id=2846643]
  30. Lao N, Mitchell T, Cohen W W. Random Walk inference and learning in a large scale Knowledge base[c]// conference on Empirical Methods in natural Language Processing, EMNLP 2011, 27-31 July 2011, John Mcintyre Conference Centre, Edinburgh, Uk, A Meeting of Sigdat, A Special Interest Group of the ACL. DBLP, 2011:529-539. [https://dl.acm.org/citation.cfm?id=2145494]
  31. Hellmann S, Lehmann J, Auer S. Learning of oWl class Descriptions on Very large Knowledge bases[J]. international Journal on semantic Web and Information Systems, 2009, 5(5):25-48. [http://wifo5-03.informatik.uni-mannheim.de/bizer/pub/iswc2008pd-bak/iswc2008pd_submission_83.pdf]
  32. lehmann J. Dl-learner: learning concepts in Description logics[J]. Journal of Machine learning Research, 2009, 10(6):2639-2642. [http://dl.acm.org/citation.cfm?id=1755874]
  33. Suchanek F M, Kasneci G, Weikum G. YAGO: A large ontology from Wikipedia and Wordnet[J]. Web semantics science services and agents on the World Wide Web, 2008, 6(3):203-217. [http://www.sciencedirect.com/science/article/pii/S1570826808000437]
  34. Vrande, Denny, Tzsch M. Wikidata: A Free collaborative Knowledge base[J]. communications of the ACM, 2014, 57(10):78-85. [https://cacm.acm.org/magazines/2014/10/178785-wikidata/fulltext]
  35. Navigli R, Ponzetto S P. BabelNet: Building a very Large Multilingual S emantic Network[ C ]// annual Meeting of the association for computational linguistics. 2010:216-225. [https://dl.acm.org/citation.cfm?id=1858704]

Tutorial

  1. 知识图谱导论 刘 康 韩先培 [http://cips-upload.bj.bcebos.com/ccks2017/upload/CCKS2017V5.pdf]
  2. 知识图谱构建 邹 磊 徐波 [http://cips-upload.bj.bcebos.com/ccks2017/upload/zl.pdf]
  3. 知识获取方法 劳 逆 邱锡鹏 [http://cips-upload.bj.bcebos.com/ccks2017/upload/2017-ccks-Knowledge-Acquisition-.pdf]
  4. 知识图谱实践 王昊奋 胡芳槐 [http://www.ccks2017.com/?page_id=46\]
  5. 知识图谱学习小组学习 • 第一期w1:知识提取 • 第一期w2:知识表示 • 第一期w3:知识存储 • 第一期w4:知识检索 [https://github.com/memect/kg-beijing]
  6. 深度学习与知识图谱 刘知远 韩先培 CCL2016 [http://www.cips-cl.org/static/CCL2016/tutorialpdf/T2A_%E7%9F%A5%E8%AF%86%E5%9B%BE%E8%B0%B1_part3.pdf]

综述

  1. 知识表示学习研究进展 刘知远 2016 [http://nlp.csai.tsinghua.edu.cn/~lyk/publications/knowledge_2016.pdf\]
  2. 知识图谱研究进展 漆桂林 2017 [[http://tie.istic.ac.cn/ch/reader/view_abstract.aspx?doi=10.3772/j.issn.2095-915x.2017.01.002]\]
  3. 知识图谱技术综述 徐增林 [http://www.xml-data.org/dzkj-nature/html/201645589.htm]
  4. 基于表示学习的知识库问答研究进展与展望 刘康 [http://www.aas.net.cn/CN/10.16383/j.aas.2016.c150674]
  5. Knowledge Graph Refinement: A Survey of Approaches and Evaluation Methods Heiko Paulheim [http://www.semantic-web-journal.net/system/files/swj1167.pdf]

视频教程

  1. Google 知识图谱系列教程(1-21)
    • [https://www.youtube.com/watch?v=mmQl6VGvX-c&list=PLOU2XLYxmsII2vIhzAyW6eouf62ur2Z2q]

代码

  1. ComplEx @ https://github.com/ttrouill/complex
  2. EbemKG @ https://github.com/pminervini/ebemkg
  3. HolE @ https://github.com/mnick/holographic-embeddings
  4. Inferbeddings @ https://github.com/uclmr/inferbeddings
  5. KGE-LDA @ https://github.com/yao8839836/KGE-LDA
  6. KR-EAR @ https://github.com/thunlp/KR-EAR
  7. mFold @ https://github.com/v-shinc/mFoldEmbedding
  8. ProjE @ https://github.com/bxshi/ProjE
  9. RDF2Vec @ http://data.dws.informatik.uni-mannheim.de/rdf2vec/code/
  10. Resource2Vec @ https://github.com/AKSW/Resource2Vec/tree/master/resource2vec-core
  11. TranslatingModel @ https://github.com/ZichaoHuang/TranslatingModel
  12. wiki2vec (for DBpedia only) @ https://github.com/idio/wiki2vec

领域专家

  1. Antoine Bordes [https://research.fb.com/people/bordes-antoine/]
  2. Estevam Rafael Hruschka Junior(Federal University of Sao Carlos) [http://www.cs.cmu.edu/~estevam/\]
  3. 鲍捷(Memect) [[http://baojie.org/blog/]]
  4. 陈华钧(浙江大学) [http://mypage.zju.edu.cn/huajun]
  5. 刘知远(清华大学) [http://nlp.csai.tsinghua.edu.cn/~lzy/\]
  6. 秦兵(哈尔滨工业大学) [https://m.weibo.cn/u/1880324342?sudaref=login.sina.com.cn&retcode=6102]
  7. 赵军(中科院自动化所) http://www.nlpr.ia.ac.cn/cip/jzhao.htm
  8. 王昊奋 狗尾草智能科技公司 [http://www.gowild.cn/home/ours/index.html]
  9. 漆桂林 东南大学 [http://cse.seu.edu.cn/people/qgl/index.htm]
  10. 刘 康 中科院自动化 [http://people.ucas.ac.cn/~liukang\]
  11. 韩先培 中国科学院软件研究所 [http://www.icip.org.cn/Homepages/hanxianpei/index.htm]
  12. 肖仰华 复旦大学 [http://gdm.fudan.edu.cn/GDMWiki/Wiki.jsp?page=Yanghuaxiao]

汇总不全面,欢迎补全和提建议,敬请关注http://www.zhuanzhi.ai 和关注专知公众号,获取第一手AI相关知识

本文参与 腾讯云自媒体分享计划,分享自微信公众号。
原始发表:2017-11-03,如有侵权请联系 cloudcommunity@tencent.com 删除

本文分享自 专知 微信公众号,前往查看

如有侵权,请联系 cloudcommunity@tencent.com 删除。

本文参与 腾讯云自媒体分享计划  ,欢迎热爱写作的你一起参与!

评论
登录后参与评论
0 条评论
热度
最新
推荐阅读
目录
  • 知识图谱 (Knowledge Graph) 专知 荟萃
    • 入门学习
      • 进阶论文
        • Tutorial
          • 综述
            • 视频教程
              • 代码
                • 领域专家
                相关产品与服务
                灰盒安全测试
                腾讯知识图谱(Tencent Knowledge Graph,TKG)是一个集成图数据库、图计算引擎和图可视化分析的一站式平台。支持抽取和融合异构数据,支持千亿级节点关系的存储和计算,支持规则匹配、机器学习、图嵌入等图数据挖掘算法,拥有丰富的图数据渲染和展现的可视化方案。
                领券
                问题归档专栏文章快讯文章归档关键词归档开发者手册归档开发者手册 Section 归档