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Interactive fuzzy numbers in the evaluation of the effectiveness of investment projects and the selection of efficient portfolios

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Języki publikacji
EN
Abstrakty
EN
The paper presents a method for evaluating the effectiveness and risks of investment projects and the selection of efficient portfolios in a situation where parameters in the calculation of effectiveness are expressed in the form of interactive fuzzy numbers. Fuzzy model simulations are used to perform arithmetic operations on interactive fuzzy numbers. The process of selecting investment projects takes into account statistical and economic dependences between projects.
Rocznik
Strony
103--127
Opis fizyczny
Bibliogr. 30 poz., rys.
Twórcy
autor
Bibliografia
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  • [6] DICKINSON M.W., THOMTON A.C., GRAVES S., Technology portfolio management. Optimizing interdependent projects over multiple time period, IEE Transaction on Engineering Management, 2001, 48, 518–527.
  • [7] DIMOVA L., SEVASTIANOV D., SEVASTIANOV P., Application of fuzzy sets theory, methods for the evaluation of investment efficiency parameters, Fuzzy Economic Review 2000, 5, 34–48.
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  • [13] KAHRAMAN C., RUAN D., DOZDAG C.E., Optimization of Multilevel Investments Using Dynamic Programming Based on Fuzzy Cash Flows, Fuzzy Optimization and Decision Making, 2003, 2, 101–122.
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  • [20] MAHOMED S., MCKOWN A.K., Modelling project investment decisions under uncertainty using possibility theory, International Journal of Project Management, 2001, 19, 231–241.
  • [21] MEDAGLIA A.L., GRAVES S.B., RINGUEST.J.L., A multiobjective evolutionary approach for linearly constrained project selection under uncertainty, European Journal of Operational Research, 2007, 179, 869–894.
  • [22] REBIASZ B., Fuzziness and randomness in investment project risk appraisal, Computers and Operations Research, 2007, 34, 199–210.
  • [23] REBIASZ B., Interactive fuzzy numbers arithmetic in financial analyses, Operation Research and Decision, 2008, 1, 61–83. (in Polish).
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  • [30] ZULUAGA A., SEFAIR J., MEDAGLIA A., Model for the Selection and Scheduling of Interdependent Projects, Proceedings of the 2007 Systems and Information Engineering Design Symposium, University of Virginia, 2007.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BUJ5-0042-0008
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