Abstract
Incompletely described objects can occur in different fields of knowledge and applications: from medicine to spacecraft control. A decision support system capable of working with such objects can be developed using different approaches. One of the two approaches considered in this paper is rule-based reasoning; such systems use preformulated production rules of the IF-THEN form. Another approach known as casebased reasoning assumes that there is a case base containing descriptions of real or artificial cases (models). This approach does not require generating sets of a priori rules, also being much more similar to the decision making model used by the human.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Don, H., Decision making in critical care, University of California School of Medicine San Francisco, B.C. Decker Inc., C.V. Mosby, 1995.
Murugesan, P., Natarajan, S.P., and Karthigeyan, L., Clinical decision support systems, Computer Sciences Corporation, 2014.
Oduoza, Chike F., Decision support system based on effective knowledge management framework to process customer order enquiry, Decision Support Systems, Chiang, S. Jao, Ed., 2010.
Aamodt, A. and Plaza, E., Case-based reasoning: Foundational issues, methodological variations, and system approaches, AI Commun., 1994, vol. 7, no. 1, pp. 39–59.
Althof, K.-D., Auriol, E., Barlette, R., and Manago, M., A review of industrial case-based reasoning tools, AI Intell., 1995.
Grudic, G. and Mulligan, J., Outdoor path labeling using polynomial mahalanobis distance, Robotics: Science and Systems II, 2006.
Deza, E. and Marie Deza, M.M., Encyclopedia of Distances, Springer, 2009.
Zhuravlev, Yu.I., Izbrannye nauchnye trudy (Selected Scientific Works), Moscow: Magistr, 1998.
Yudin, V.N., Proximity measure in a case-based inference system, Dokl. 12-i Vseross. konf. Matematicheskie metody raspoznavaniya obrazov (Proc. 12th All-Russ. Conf. Mathematical Methods of Pattern Recognition), Moscow: MAKS Press, 2005, pp. 241–244.
Yudin, V.N. and Karpov, L.E., Hybrid approach to construct decision support systems, Tr. Inst. Sistemnogo Program. Ross. Akad. Nauk, 2013, vol. 24, pp. 447–456.
Yudin, V. and Karpov, L., The case-based software system for physician’s decision support, Proc. 1st Int. Conf. Information Technology in Bio- and Medical Informatics (ITBAM), Sami Khari, Lenka Lhotska, and Nadia Pisanti, Eds., Bilbao, 2010.
Karpov, L.E. and Yudin, V.N., Integration of methods for data mining and case-based inference in medical diagnosis and treatment selection, Dokl. 13-i Vseross. konf. Matematicheskie metody raspoznavaniya obrazov (Proc. 13th All-Russ. Conf. Mathematical Methods of Pattern Recognition), Moscow: MAKS Press, 2007, pp. 589–591. http://www.mmro.ru/files/2007-mmro-13.pdf.
Yudin, V.N., Karpov, L.E., and Vatazin, A.V., Metody intellektual’nogo analiza dannykh i vyvoda po pretsedentam v programmnoi sisteme podderzhki vrachebnykh reshenii (Data mining and case-based inference methods in a software system for medical decision support), Moscow, 2008, vol. 17, part 1, pp. 266–269.
Yudin, V.N., Karpov, L.E., and Vatazin, A.V., Treatment process as an adaptive control of the human organism in the “Sputnik vracha” software system, Al’m. Klin. Med., 2008, vol. 17, part 1, pp. 262–265.
Author information
Authors and Affiliations
Corresponding author
Additional information
Original Russian Text © V.N. Yudin, L.E. Karpov, 2017, published in Programmirovanie, 2017, Vol. 43, No. 5.
Rights and permissions
About this article
Cite this article
Yudin, V.N., Karpov, L.E. Incompletely described objects in decision support. Program Comput Soft 43, 294–299 (2017). https://doi.org/10.1134/S0361768817050073
Received:
Published:
Issue Date:
DOI: https://doi.org/10.1134/S0361768817050073