Information Technology Reference
In-Depth Information
7. Dietterich, T.G.: Ensemble methods in machine learning. In: Kittler, J., Roli, F. (eds.) MCS
2000. LNCS, vol. 1857, pp. 1-15. Springer, Heidelberg (2000)
8. Dojat, M., Pachet, F., Guessoum, Z., Touchard, D., Harf, A., Brochard, L.: Neoganesh: a
working system for the automated control of assisted ventilation in ICUs. Artificial Intelli-
gence in Medicine 11(2), 97-117 (1997)
9. Dongarra, J., Bosilca, G., Chen, Z., Eijkhout, V., Fagg, G.E., Fuentes, E., Langou, J.,
Luszczek, P., Pjesivac-Grbovic, J., Seymour, K., You, H., Vadhiyar, S.S.: Self-adapting nu-
merical software (SANS) effort. IBM Journal of Research and Development 50(2/3), 223-
238 (2006)
10. Dousson, C.: Alarm driven supervision for telecommunication networks. ii- on-line chronicle
recognition. Annales des Telecommunications 51(9-10), 501-508 (1996)
11. Dousson, C., Gaborit, P., Ghallab, M.: Situation recognition: representation and algorithms.
In: Proceedings of the International Joint Conference on Artificial Intelligence (IJCAI), pp.
166-172 (1993)
12. Fromont, E., Quiniou, R., Cordier, M.-O.: Learning rules from multisource data for cardiac
monitoring. In: Miksch, S., Hunter, J., Keravnou, E.T. (eds.) AIME 2005. LNCS (LNAI),
vol. 3581, pp. 484-493. Springer, Heidelberg (2005)
13. Guimaraes, G., Peter, J.-H., Penzel, T., Ultsch, A.: A method for automated temporal
knowledge acquisition applied to sleep-related breathing disorders. Artificial Intelligence in
Medicine 23(3), 211-237 (2001)
14. Guyet, T., Quiniou, R.: Mining temporal patterns with quantitative intervals. In: 4th Interna-
tional Workshop on Mining Complex Data (December 2008)
15. Guyet, T., Quiniou, R., Cordier, M.-O., Wang, W.: Diagnostic multi-sources adaptatif appli-
cation la dtection dintrusion dans des serveurs web. In: EGC 2009 (January 2009)
16. Guyet, T., Garbay, C., Dojat, M.: Knowledge construction from time series data using a
collaborative exploration system. Journal of Biomedical Informatics 40(6), 672-687 (2007)
17. Karsai, G., Ledeczi, A., Sztipanovits, J., Peceli, G., Simon, G., Kovacshazy, T.: An ap-
proach to self-adaptive software based on supervisory control. In: Laddaga, R., Shrobe, H.E.,
Robertson, P. (eds.) IWSAS 2001. LNCS, vol. 2614, pp. 24-38. Springer, Heidelberg (2003)
18. Kolter, J.Z., Maloof, M.A.: Using additive expert ensembles to cope with concept drift. In:
De Raedt, L., Wrobel, S. (eds.) ICML. ACM International Conference Proceeding Series,
vol. 119, pp. 449-456. ACM, New York (2005)
19. Larsson, J.E., Hayes-Roth, B.: GUARDIAN: An intelligent autonomous agent for medical
monitoring and diagnosis. IEEE Intelligent Systems 13, 58-64 (1998)
20. Lavrac, N., Zupan, B., Kononenko, I., Kukar, M., Keravnou, E.T.: Intelligent data analysis
for medical diagnosis: Using machine learning and temporal abstraction. AI Communica-
tions 11, 191-218 (1998)
21. McKinley, P.K., Sadjadi, S.M., Kasten, E.P., Cheng, B.H.C.: Composing adaptive software.
IEEE Computer 37(7), 56-64 (2004)
22. Miksch, S., Horn, W., Popow, C., Paky, F.: Utilizing temporal data abstraction for data vali-
dation and therapy planning for artificially ventilated newborn infants. Artificial Intelligence
in Medicine 8, 543-576 (1996)
23. Moody, G.B.: ECG database applications guide, 9th edn. Harvard-MIT Division of Health
Sciences and Technology Biomedical Engineering Center (1997)
24. Mora, F., Passariello, G., Carrault, G., Le Pichon, J.-P.: Intelligent patient monitoring and
management systems: A review. IEEE Engineering in Medicine and Biology 12(4), 23-33
(1993)
25. Muggleton, S., De Raedt, L.: Inductive Logic Programming: Theory and methods. The Jour-
nal of Logic Programming 19 & 20, 629-680 (1994)
26. Portet, F., Hernandez, A.I., Carrault, G.: Evaluation of real-time QRS detection algorithms in
variable contexts. Medical & Biological Engineering & Computing 43(3), 381-387 (2005)
Search WWH ::




Custom Search