Framework of Computational Intelligence-Enhanced Knowledge Base Construction: Methodology and A Case of Gene-Related Cardiovascular Disease (original) (raw)

References

  1. F. Niu, C. Zhang, C. Ré, J. Shavlik, Elementary: large-scale knowledge-base construction via machine learning and statistical inference, Int. J. Semant. Web Inf. Syst. 8 (2012), 42–73.
    Google Scholar
  2. C. De Sa, et al., Deepdive: declarative knowledge base construction, ACM SIGMOD Record. 45 (2016), 60–67.
    Google Scholar
  3. Y. Zhang, G. Zhang, H. Chen, A.L. Porter, D. Zhu, J. Lu, Topic analysis and forecasting for science, technology and innovation: methodology and a case study focusing on big data research, Technol. Forecast. Soc. Change. 105 (2016), 179–191.
    Google Scholar
  4. W. Hood, C. Wilson, The literature of bibliometrics, scientometrics, and informetrics, Scientometrics. 52 (2001), 291–314.
    Google Scholar
  5. Y. Guo, L. Huang, A.L. Porter, Profiling research patterns for a new and emerging science and technology: dye-sensitized solar cells, in 2009 Atlanta Conference on Science and Innovation Policy, Atlanta, GA, USA, 2009, pp. 1–7.
  6. C.-K. Yau, A. Porter, N. Newman, A. Suominen, Clustering scientific documents with topic modeling, Scientometrics. 100 (2014), 767–786.
    Google Scholar
  7. Y. Huang, et al., A hybrid method to trace technology evolution pathways: a case study of 3D printing, Scientometrics. 111 (2017), 185–204.
    Google Scholar
  8. W. Ding, C. Chen, Dynamic topic detection and tracking: a comparison of HDP, C-word, and cocitation methods, J. Assoc. Inf. Sci. Technol. 65 (2014), 2084–2097.
    Google Scholar
  9. Y. Zhang, et al., Does deep learning help topic extraction? A kernel k-means clustering method with word embedding, J. Informet. 12 (2018), 1099–1117.
    Google Scholar
  10. Y. Zhang, G. Zhang, D. Zhu, J. Lu, Scientific evolutionary pathways: Identifying and visualizing relationships for scientific topics, J. Assoc. Inf. Sci. Technol. 68 (2017), 1925–1939.
    Google Scholar
  11. C. Zhang, et al., DeepDive: declarative knowledge base construction, Commun. ACM. 60 (2017), 93–102.
    Google Scholar
  12. A.B. McCoy, et al., Development and evaluation of a crowdsourcing methodology for knowledge base construction: identifying relationships between clinical problems and medications, J. Am. Med. Informat. Assoc. 19 (2012), 713–718.
    Google Scholar
  13. S. Oramas, L. Espinosa-Anke, M. Sordo, H. Saggion, X. Serra, Information extraction for knowledge base construction in the music domain, Data Knowl. Eng. 106 (2016), 70–83.
    Google Scholar
  14. B. Pereira, C. Robin, T. Daudert, J.P. McCrae, P. Mohanty, P. Buitelaar, Taxonomy extraction for customer service knowledge base construction, in International Conference on Semantic Systems, Karlsruhe, Germany, 2019, pp. 175–190.
  15. M. Al-Badrashiny et al., TinkerBell: Cross-lingual cold-start Q45 knowledge base construction, in Text Analysis Conference, Gaithersburg, Maryland, USA, 2017.
  16. S. Wu, et al., Fonduer: knowledge base construction from richly formatted data, in Proceedings of the 2018 International Conference on Management of Data, ACM, Houston, TX, USA, 2018, pp. 1301–1316.
  17. D. Ritze, O. Lehmberg, Y. Oulabi, C. Bizer, Profiling the potential of web tables for augmenting cross-domain knowledge bases, in Proceedings of the 25th International Conference on World Wide Web, International World Wide Web Conferences Steering Committee, Montréal, Canada, 2016, pp. 251–261.
  18. R. Yu, U. Gadiraju, B. Fetahu, O. Lehmberg, D. Ritze, S. Dietze, KnowMore–knowledge base augmentation with structured web markup, Semantic Web. 10 (2019), 159–180.
    Google Scholar
  19. D. Price, Little Science, Big Science, Columbia University Press, New York, NY, USA, 1963.
  20. A. Pritchard, Statistical bibliography or bibliometrics, J. Document. 25 (1969), 348–349.
    Google Scholar
  21. Y. Zhang, Y. Guo, X. Wang, D. Zhu, A.L. Porter, A hybrid visualisation model for technology roadmapping: bibliometrics, qualitative methodology and empirical study, Technol. Anal. Strat. Manag. 25 (2013), 707–724.
    Google Scholar
  22. R.M. Shiffrin, K. Börner, Mapping knowledge domains, Proc. Natl. Acad. Sci. 101 (2004), 5183–5185.
  23. Y. Zhang, H. Chen, J. Lu, G. Zhang, Detecting and predicting the topic change of knowledge-based systems: a topic-based bibliometric analysis from 1991 to 2016, Knowl. Based Syst. 133 (2017), 255–268.
    Google Scholar
  24. C. Chen, Z. Hu, S. Liu, H. Tseng, Emerging trends in regenerative medicine: a scientometric analysis in CiteSpace, Expert Opin. Biol. Therapy. 12 (2012), 593–608.
    Google Scholar
  25. E. Yan, Y. Ding, Q. Zhu, Mapping library and information science in China: a coauthorship network analysis, Scientometrics. 83 (2009), 115–131.
    Google Scholar
  26. E. Yan, R. Guns, Predicting and recommending collaborations: an author-, institution-, and country-level analysis, J. Informet. 8 (2014), 295–309.
    Google Scholar
  27. T. Tang, D. Popp, The learning process and technological change in wind power: evidence from China’s CDM wind projects, J. Policy Anal. Manag. 35 (2016), 195–222.
    Google Scholar
  28. Y. Zhang, A. Porter, S.W. Cunningham, D. Chiavetta, N. Newman, Parallel or intersecting lines? Intelligent bibliometrics for investigating the involvement of data science in policy analysis, IEEE Trans. Eng. Manag. (2020), 1–13.
  29. W. Pedrycz, Computational Intelligence: an Introduction, Boca Raton, Florida, USA: CRC Press, 1997. ISBN 9780849326431.
  30. Y. LeCun, Y. Bengio, G. Hinton, Deep learning, Nature. 521 (2015), 436–444.
    Google Scholar
  31. L.A. Zadeh, Fuzzy sets, Inf. Control. 8 (1965), 338–353.
    Google Scholar
  32. J. Ma, J. Lu, G. Zhang, Decider: a fuzzy multi-criteria group decision support system, Knowl. Based Syst. 23 (2010), 23–31.
    Google Scholar
  33. Z. Zhang, H. Lin, K. Liu, D. Wu, G. Zhang, J. Lu, A hybrid fuzzy-based personalized recommender system for telecom products/services, Inf. Sci. 235 (2013), 117–129.
    Google Scholar
  34. D. Wu, G. Zhang, J. Lu, A fuzzy preference tree-based recommender system for personalized business-to-business e-services, IEEE Trans. Fuzzy Syst. 23 (2014), 29–43.
    Google Scholar
  35. Y. Ju, A. Wang, X. Liu, Evaluating emergency response capacity by fuzzy AHP and 2-tuple fuzzy linguistic approach, Expert Syst. Appl. 39 (2012), 6972–6981.
    Google Scholar
  36. T. Back, U. Hammel, H.-P. Schwefel, Evolutionary computation: Comments on the history and current state, IEEE Trans. Evol. Comput. 1 (1997), 3–17.
    Google Scholar
  37. Y. Zhang, A.L. Porter, Z. Hu, Y. Guo, N.C. Newman, “Term clumping” for technical intelligence: a case study on dyesensitized solar cells, Technol. Forecast. Soc. Change. 85 (2014), 26–39.
  38. E.C. Noyons, A.F. van Raan, Monitoring scientific developments from a dynamic perspective: self-organized structuring to map neural network research, J. Am. Soc. Inf. Sci. 49 (1998), 68–81.
  39. M. Callon, J.-P. Courtial, W.A. Turner, S. Bauin, From translations to problematic networks: an introduction to co-word analysis, Soc. Sci. Inf. 2 (1983), 191–235.
    Google Scholar
  40. G. Salton, M.J. McGill, Introduction to Modern Information Retrieval, McGraw-Hill, Auckland, New Zealand, 1986. ISBN 0-07-054484-0.
  41. L. Waltman, N.J. Van Eck, A smart local moving algorithm for large-scale modularity-based community detection, Eur. Phys. J. B. 86 (2013), 471.
  42. Y. Zhang, L. Shang, L. Huang, A.L. Porter, J. Lu, D. Zhu, A hybrid similarity measure method for patent portfolio analysis, J. Inf. 10 (2016), 1108–1130.
    Google Scholar
  43. L. Huang, Y. Zhu, Y. Zhang, X. Zhou, X. Jia, A link prediction-based method for identifying potential cooperation partners: a case study on four journals of informetrics, in 2018 Portland International Conference on Management of Engineering and Technology (PICMET), IEEE, Honolulu, HI, USA, 2018, pp. 1–6.
  44. A.F. van Raan, Sleeping beauties in science, Scientometrics. 59 (2004), 467–472.
  45. T. Mikolov, I. Sutskever, K. Chen, G.S. Corrado, J. Dean, Distributed representations of words and phrases and their compositionality, in Advances in Neural Information Processing Systems, Lake Tahoe, Nevada, USA, 2013, pp. 3111–3119.
  46. K. Deb, A. Pratap, S. Agarwal, T. Meyarivan, A fast and elitist multiobjective genetic algorithm: NSGA-II, IEEE Trans. Evol. Comput. 6 (2002), 182–197.
    Google Scholar
  47. N. Srinivas, K. Deb, Muiltiobjective optimization using nondominated sorting in genetic algorithms, Evol. Comput. 2 (1994), 221–248.
    Google Scholar
  48. J.W. Knowles, E.A. Ashley, Cardiovascular disease: the rise of the genetic risk score, PLoS Med. 15 (2018), e1002546.
  49. S.-W. Hung, A.-P. Wang, Examining the small world phenomenon in the patent citation network: a case study of the radio frequency identification (RFID) network, Scientometrics. 82 (2010), 121–134.
    Google Scholar
  50. L. Lü, T. Zhou, Link prediction in weighted networks: the role of weak ties, Europhys. Lett. 89 (2010), 18001.
    Google Scholar

Download references