PL EN


Preferencje help
Widoczny [Schowaj] Abstrakt
Liczba wyników
Tytuł artykułu

Knowledge Mining from Data: Methodological Problems and Directions for Development

Autorzy
Wybrane pełne teksty z tego czasopisma
Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
The development of knowledge engineering and, within its framework, of data mining or knowledge mining from data should result in the characteristics or descriptions of objects, events, processes and/or rules governing them, which should satisfy certain quality criteria: credibility, accuracy, verifiability, topicality, mutual logical consistency, usefulness, etc. Choosing suitable mathematical models of knowledge mining from data ensures satisfying only some of the above criteria. This paper presents, also in the context of the aims of The Committee on Data for Science and Technology (CODATA), more general aspects of knowledge mining and popularization, which require applying the rules that enable or facilitate controlling the quality of data.
Słowa kluczowe
Rocznik
Strony
227--233
Opis fizyczny
Bibliogr. 23 poz., rys., tab.
Twórcy
Bibliografia
  • [1] Bangemann M 1994 Europe and the Global Information Society. Recomme.ndations to the European Council, Bruksela (in Polish)
  • [2] Bazcwicz M 2000 A Vision of Communication. Information and Knowledge Society in XXI Cenimy, SILESIA, Wrocław (in Polish)
  • [3] Golinski M 1997 Development Level of Information Infmslructure of a Society. An Attempt to Eualuation, AOW PL.I, Warsaw (in Polish)
  • [4] Jacquart R (Ed.) 2004 Building the Information Sonety. IFIP 18ih World Computer Congress. 22 27 August 2004- Kluwer Acadernic Publishers, Boston
  • [5] Kulikowski,] L 1978 Information and the World Where We Lwe, WP, Warsaw (in Polish)
  • [6] Tadcusiewicz R 2002 The Society of Internet, AOW EXIT, Warsaw (in Polish)
  • [7] Skarbek W (Ed.) 1998 Multimedia. Algonthms and Com.pression Standards, AOW PLJ: Warsaw (in Polish)
  • [8] Bhaskaran V and Koiislantinides K 1995 Image and Video Compression Standards. Algorithms and Applications, Kluwer Academic Publishera. Boston
  • [9] Kacprzyk J, Yager R R and Zadrożny S 2000 Int. J. of Appl. Math. and Comp. Sci. 10 813
  • [10] Ouziri M. Verdier C and Flory A 2003 Intelligent Information Processing and Web Mining. (Kłopotek M A, Wierzchoń S T and Trojanowski K, Eds), AiSC, Springer-Verlag, Berlin, pp. 189 198
  • [11] Michalski R S 1994 Seeking Knowledge in the Flood of Facts. Intelligent information Systems, Proc. of the Workshop held in Wigry, Poland, 6-10 June, 1994, IPI PAN, Warsaw
  • [12] Weiss S M and Indurkhya N 1998 Predictive Data Mining. A Practical Guide, Morgan Kaufmann Publishers, Inc., San Francisco
  • [13] Cios K J (Ed.) 2001 Medical Data Mimng and Knowledge Discovery. Studies in Fuzziness and Soft Computing. Physica-Verlag, Heidelberg
  • [14] Coenen F 2011 The Knowledge Eng. Rev. 26 (1) 25
  • [15] Maimon O and Rokach L 2005 The Data Mining and Knowledge. Discovery Handbook. Springer, New York
  • [16] Larose D T 2006 Diseonering Knowledge m Data. An Introduction to DATA MINING, WN PWN, Warsaw (in Polish)
  • [17] Jashapara A 2006 Knowledge Management: an Iniegrated Approach, PWE, Warsaw (in Polish)
  • [18] Mariscal G, Marban Ó and Fernandez C 2010 The Knowledge Eng. Rev. 25 (2) 137
  • [19] Chen H. Fuller S S, Friedman C and Hersh WT 2005 Medical Informatics. Knowledge. Management and Data Mining in Biomedicine, IS 2, Springer, USA
  • [20] Kulikowski J L 2009 Data QuaUty Assessment. Innovations in Datahase Technologies and Applications. Current and Future Trends, (Ferragine V E, Doorn J H and Rivero L C, Eds) Vol. I, Chapt. XLI, Information Science llefcrcnce, Hershey
  • [21] Shankaranarayanan G and Even A 2009 Measuring Data Quality m Conteit. Innovations in Database Technologies and Applications. Current and Fulure Trends. (Ferragine V E, Doorn J H and Rivero L C, Eds) Vol. I. Chapt. XLII. Information Science Reference, Hershey
  • [22] Pialctsky-Shapiro G 1991 R.cport on the AAAI-91 Workshop on Knowledge Discovery in Databases, Technical Report 6, IKRE Expert
  • [23] Chapman P et al. 2000 CRISP-DM 1.0 Step-by-Step Data Mimng Guide, Technical Report, CRISP-DM
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BPG8-0067-0030
JavaScript jest wyłączony w Twojej przeglądarce internetowej. Włącz go, a następnie odśwież stronę, aby móc w pełni z niej korzystać.