DOI QR코드

DOI QR Code

Dynamic knowledge mapping guided by data mining: Application on Healthcare

  • Brahami, Menaouer (Laboratory LIO, Dept. of Computer Science, Faculty of Sciences, University of Oran) ;
  • Atmani, Baghdad (Laboratory LIO, Dept. of Computer Science, Faculty of Sciences, University of Oran) ;
  • Matta, Nada (Laboratory ICD/TechCICO, University of Technology of Troyes (UTT))
  • Received : 2012.12.09
  • Accepted : 2013.02.20
  • Published : 2013.03.31

Abstract

The capitalization of know-how, knowledge management, and the control of the constantly growing information mass has become the new strategic challenge for organizations that aim to capture the entire wealth of knowledge (tacit and explicit). Thus, knowledge mapping is a means of (cognitive) navigation to access the resources of the strategic heritage knowledge of an organization. In this paper, we present a new mapping approach based on the Boolean modeling of critical domain knowledge and on the use of different data sources via the data mining technique in order to improve the process of acquiring knowledge explicitly. To evaluate our approach, we have initiated a process of mapping that is guided by machine learning that is artificially operated in the following two stages: data mining and automatic mapping. Data mining is be initially run from an induction of Boolean case studies (explicit). The mapping rules are then used to automatically improve the Boolean model of the mapping of critical knowledge.

Keywords

References

  1. A. Barroso, R. Ricciardi, "Knowledge domains cartography of the radio pharmacy center of IPEN-a case study", Nuclear and Energy Research Institute (IPEN). Brazil, 2003.
  2. A. Godbout, Mapping knowledge, the foundation of knowledge organization. Article of Godbout, Martin Godbout & Associates, 1999.
  3. A. Pachulski, M. Grundstein and C. Rosenthal-Sabroux, "GAMETH: A Methodology Aimed to Locate the Company's Crucial Knowledge". ECKM'00, October 26-27-2000, Bled (Slovenia).
  4. A. T. Beck, G. Borown, R. A. Steer, "Beck Depression Inventory II manual", San Antonio, TX: The Psychological Corporation, 1996.
  5. B. Atmani, and B. Beldjilali, "Neuro-IG Neuro-IG: A Hybrid System for Selection and Elimination of Predictor Variables and non-Relevant Individuals", Informatica, Vol.18, Issue 2 (April 2007), ISSN: 0868-4952, 2007a, pp.163-186.
  6. B. Atmani, and B. Beldjilali, "Knowledge Discovery in Database: Induction Graph and Cellular Automaton", Computing and Informatics Journal, Vol.26, No.2 (2007), 2007b, pp.171-197.
  7. D. Hand, H. Mannila and P. Smyth, Principles of Data Mining, MIT Press, 2001.
  8. D.A. Zighed, J.P. Auray and G. Duru, SIPINA : Methode et logiciel, Lacassagne, 1992.
  9. D.A. Zighed, R. Rakotomalala, Graphs of induction, Training and Data Mining, Hermes Science Publication (Edition Hermes Sciences), 2000, pp.21-23.
  10. E. Blanchard, M. Hazallah, H. Brinad, "Reasoning in competence management", Workshop: Extraction and Knowledge Management- EGC 2005, Vol.II, cepadues-editions, ISBN : 2.85428.677.4, p.587
  11. F. Jalabert, Cartographie des connaissances: l'integration et la visualisation au service de la biologie, Doctoral thesis at the University of Montpellier, specialty : structures and systems, 2007.
  12. G. Aubertin, I. Boughzala, J.L. Ermine, "Cartographie des connaissances critiques (Mapping of critical knowledge)", Revue des Sciences et Technologies de l'Information, Serie RIA-ECA, Hermes-Lavoisier, Vol.17, No.1-2-3, Paris, 2003, pp.495-502.
  13. G. Aubertin, "Knowledge mapping: a strategic entry point to knowledge management". Trends in Enterprise Knowledge Management, ISTE, Londres, 2006.
  14. G. Aubertin, Cartographier les connaissances critiques: une demarche strategique pour l'entreprise, Management des connaissances en entreprise. Lavoisier, Hermes Science, Paris, 2007, pp.125-144.
  15. G. Balmisse, "Gestion des connaissances. Outils et applications du knowledge management", Edition Vuibert (France), 2005, ISSN : 1628-5360.
  16. I. Boughzala, J.L. Ermine , Management des connaissances en entreprise, Collection technique et scientifique des telecommunications, Hermes, 2004.
  17. I. Nonaka, H. Takeuchi, The Knowledge-Creating Company, Oxford University Press, Oxford, New York, 1995.
  18. I. Saad, M. Grundstein and C. Rosenthal-Sabroux, "Locating the Company's Crucial knowledge to Specify Corporate Memory: A Case Study in an Automotive Company", Workshop Knowledge Management and Organizational Memory, IJCAI'2003, International Joint Conference on Artificial Intelligence, August 9-16-2003.
  19. I.H. Witten, E. Frank, Data Mining: Practical Machine Learning Tools and Techniques. Second Edition, 2005. Morgan Kaufmann.
  20. J.L. Chabot, Transfert de savoir en HYDRO-QUEBEC perspective et strategie. Colloque annuel de CERFIO, Atelier No.3, 2006.
  21. J.L. Ermine, I. Boughzala, T. Tounkara, "Critical Knowledge Map as a Decision Tool for Knowledge Transfer Actions", The Electronic Journal of Knowledge Management, Vol.4, Issue 2, 2006, Available online : http://www.ejkm.com, pp.129-140
  22. J.L. Ermine, "A Theoretical and formal for Knowledge Management Systems", dans D. Remenyi, 2nd International Conference on Intellectual Capital and Knowledge Management (ICICKM'2005), Dubia, United Arab Emirates (U.A.E), 2005, pp.187-199.
  23. J.L. Ermine, I. Boughzala, "Using Cartography to Sustain Inter-Generation Knowledge Transfer: The M3C Methodology". In 2nd International Conference on Intellectual Management, Knowledge Management and Organizational Learning. American University in Dubai. United Arab Emirates, ISBN: 1- 905305-14-1, 2005, pp.175-186.
  24. J.L. Ermine, Introduction au Knowledge Management, Management des connaissances en entreprise. Lavoisier, Hermes Science: 2007, Paris, pp.23-45.
  25. J. Han, M. Kamber, Data Mining : Concepts and Techniques, The Morgan Kaufmann Series in Data Management Systems, University of Illinois at Urbana-Champaign (Canada), 2nd Edition, Elsevier, 2006, ISBN : 10: 1-55860-901-6, Available online : http://www.cs.uiuc.edu/-hanj/bk2/
  26. J. Pomian, C. Roche, Connaissance Capitale : Management des connaissances et organisation du travail, L'Harmattan, 2002, Paris.
  27. J.Y. Prax, Le manuel du Knowledge Management, An approach of 2nd generation, Edition: Dunod, Paris, 2007, pp.219-230.
  28. J. R. Quinlan, "Induction of decision trees", Machine Learning, Vol.1: Issue 1, 1986, pp.8-106.
  29. J. R. Quinlan, "Unknown attribute values in induction", In International Machine Learning Workshop Cornell, New York, USA, 1987.
  30. Le Khac. Nhien An, M. A. Lamine "Distributed Knowledge Map for Mining Data on Grid Platforms", IJCSNS International Journal of Computer Science and Network Security, Vol.7, No.10, October 2007, pp.98-107.
  31. M. Authier, P. Levy, "Les arbres de connaissances", La Decouverte, Paris, 1992.
  32. M. Brahami, and B. Atmani, "Vers une cartographie des connaissances guide par la fouille des donnees : 1ere etape modelisation booleenne". $2^{eme}4 Conference Francophone GECSO'09, Revue electronique ISDM, ISDM No.36, 2009a.
  33. M. Brahami, and B. Atmani, "Vers une cartographie des connaissances guidee par la fouille des donnees". $2^{eme}$ Conference Internationale CIIA'09, Universite de Saida, Algerie, Publier dans http://CEUR-WS.org, ISSN: 1613-0073, 2009b.
  34. M. Brahami, and B. Atmani, "Vers une fouille visuelle des donnees par automate cellulaire : application a la cartographie des connaissances critiques". Atelier dans le cadre de plateforme AFIA'09, Yasmine Hammamet, Tunisie, 25 mai 2009, 2009c.
  35. M. Brahami, B. Atmani, and M. Mokaddem, "CARTOCEL : Un outil de cartographie des connaissances guidee par la machine cellulaire CASI", In $10^{eme}$ Conference Internationale Francophone sur l'Extraction et Gestion des Connaissances, EGC'2010, RNTI (E-19), Edition Cepadues, ISSN : 1764.1667.
  36. M. Grundstein, "From capitalizing on company knowledge to knowledge management", Knowledge Management: Classic and Contemporary Works M. Press, Daryl Morey, Mark Maybury and Bhavani Thuraisingham, 2000, p.451.
  37. M. Jelena and I. Beleviciute, "Data mining for knowledge management in technology enhanced learning", Proceedings of the 6th conference on Applications of electrical engineering, Istanbul, Turkey, pp.115-119.
  38. N. Matta, M. Ribiere, O. Corby, M. Lewkowicz, and M. Zacklad, Project Memory in Design, Industrial Knowledge Management-A Micro Level Approach, Rajkumar Roy (Eds), Springer-Verlag, 2000.
  39. N. Matta, and J.L. Ermine, knowledge capitalization with a knowledge engineering approach : the MASK method, IJCAT'2001, knowledge management and organizational memory workshop. International Joint Conference on Artificial Intelligence, seattle, Etats-Unis, 4-10 aout 2001.
  40. P.H. Speel, N. Shadbolt, W. De Vies and P.H. Van Dam, O'hara K, "Knowledge Mapping for industrial purpose", Conference KAW'99, Banff, Canada, 1999.
  41. P. Van Berten, J.L. Ermine, "Applied Knowledge Management: a set of well-tried tools". The Journal of Information and Knowledge Management Systems, Vol.36, 4, 2006, pp.423-431. https://doi.org/10.1108/03055720610716674
  42. R. Dieng-Kuntz, Capitalisation des connaissances via un web semantique d'entreprise, Management des connaissances en entreprise. Lavoisier, Hermes Science, Paris, 2007, pp.255-272.
  43. R. Rakotomalala, Induction Graphs, Thesis for the obtaining of the Diploma PhD, University of Claude Bernard-Lyon 1, 1997, France.
  44. R.I. Ricciardi, A.C.O. Barroso and J.L. Ermine, "Knowledge Evaluation for knowledge management Implementation . the Case Study of the Radio-pharmaceutical Centre of IPEN", International Journal of Nuclear Knowledge Management, Vol.2, No.1, 2006, pp.64-75. https://doi.org/10.1504/IJNKM.2006.009620
  45. S. Bekhti, and N. Matta, "A Formal Approach to Model and Reuse the Project Memory", Journal of Universal Computer Science. Proceedings of I-Know '01, International Conference on Knowledge Management, edited by K. Tochtermann and H. Maurer, July 2003, Springer.
  46. T. Buzan, "A head well done-Use you intellectual resources", Editor: Organisation Eds, Novembre 2011, and ISBN: 2212552149, pp.1-186.
  47. T. Isckia., T. Tounkara, "Community of Practice and Organizational Design", Global conference on Emergent Business Phenomena in the Digital Economy (ICEB + eBRF), November 28-December 2-2006, Tampere Hall-Tampere, Finland.
  48. T. Mitchell, Machine Learning. McGraw-Hill, 1997.
  49. T. Tounkara, J.L. Ermine, Methode de cartographie pour l'alignement strategique de la gestion des connaissances, Chapitre 4 dans ERMINE J.L. (2008). Management et Ingenierie des connaissances : modeles et methodes, Collection IC2 (Information, Commande, Communication), Serie : management et Gestion des STIC, Edition Hermes . Lavoisier, 2008.
  50. T. Tounkara., I. Boughzala and T. Tounkara, "M3C: A Methodology of Mapping Knowledge critical in the company", IBIMA'2005, Cairo, Egypt, 2005.
  51. U. Fayyad, G.P. ShapirO, P. Smyth, "The KDD process for extraction useful knowledge from volumes data", In: Communication of the ACM, Vol.39, November 1996, pp.27-34.
  52. U. Fayyad, G. Piatetsky-Shapiro and P. Smyth, "Knowledge Discovery and Data Mining: Towards a Unifying Framework", Proc. 2nd International Conference on KDD & DM, Simoudis E. and Han J. (Eds.), AAAI Press, Menlo Park CA, 1996, pp.82-87.
  53. V. Devedzic, "Knowledge Discovery and Data Mining in Databases". In "Handbook of Software Engineering and Knowledge Engineering Vol.1-Fundamentals", World Scientific Publishing Co., Singapore, 2001, pp.615-637.
  54. W. Hai, S. Wang, "A knowledge management approach to data mining process for business intelligence", Journal: Industrial management & data systems, Vol.108, Issue: 5, 2008, pp.622-634. https://doi.org/10.1108/02635570810876750

Cited by

  1. Multiple Minimum Support-Based Rare Graph Pattern Mining Considering Symmetry Feature-Based Growth Technique and the Differing Importance of Graph Elements vol.7, pp.3, 2015, https://doi.org/10.3390/sym7031151
  2. Fast video encoding algorithm for efficient social media service vol.74, pp.14, 2015, https://doi.org/10.1007/s11042-013-1728-x
  3. Data modeling mobile augmented reality: integrated mind and body rehabilitation vol.74, pp.10, 2015, https://doi.org/10.1007/s11042-013-1649-8
  4. Semantic complex event processing model for reasoning research activities vol.209, 2016, https://doi.org/10.1016/j.neucom.2015.11.121
  5. The Development of a Tourism Attraction Model by Using Fuzzy Theory vol.2015, 2015, https://doi.org/10.1155/2015/643842
  6. Development of Network Analysis and Visualization System for KEGG Pathways vol.7, pp.3, 2015, https://doi.org/10.3390/sym7031275
  7. Ubiquitous Health Management System with Watch-Type Monitoring Device for Dementia Patients vol.2014, 2014, https://doi.org/10.1155/2014/878741
  8. Analyzing User Experience Design of Mobile Hospital Applications Using the Evaluation Grid Method vol.91, pp.4, 2016, https://doi.org/10.1007/s11277-016-3193-0
  9. Ensuring Healthcare Services Provision: An Integrated Approach of Resident Contexts Extraction and Analysis via Smart Objects vol.10, pp.3, 2014, https://doi.org/10.1155/2014/481952
  10. Medical Image Segmentation for Mobile Electronic Patient Charts Using Numerical Modeling of IoT vol.2014, 2014, https://doi.org/10.1155/2014/815039
  11. Acute Mental Discomfort Associated with Suicide Behavior in a Clinical Sample of Patients with Affective Disorders: Ascertaining Critical Variables Using Artificial Intelligence Tools vol.8, 2017, https://doi.org/10.3389/fpsyt.2017.00007
  12. Development of the Korean Spine Database and Automatic Surface Mesh Intersection Algorithm for Constructinge-Spine Simulator vol.2014, 2014, https://doi.org/10.1155/2014/471756
  13. Development of Patient Status-Based Dynamic Access System for Medical Information Systems vol.7, pp.2, 2015, https://doi.org/10.3390/sym7021028
  14. Qualitative Spatial Reasoning with Directional and Topological Relations vol.2015, 2015, https://doi.org/10.1155/2015/902043
  15. Mapping discovery modeling and its empirical research for the scientific and technological knowledge concept in unified concept space vol.18, pp.1, 2015, https://doi.org/10.1007/s10586-013-0339-7
  16. An analysis of performance factors on Esper-based stream big data processing in a virtualized environment vol.27, pp.6, 2014, https://doi.org/10.1002/dac.2734
  17. An improved collaborative recommendation algorithm based on optimized user similarity vol.72, pp.7, 2016, https://doi.org/10.1007/s11227-015-1518-5
  18. Multi-level assessment model for wellness service based on human mental stress level vol.76, pp.9, 2017, https://doi.org/10.1007/s11042-016-3444-9
  19. Adaptive Failure Identification for Healthcare Risk Analysis and Its Application on E-Healthcare vol.2014, 2014, https://doi.org/10.1155/2014/865241