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Data Extrapolation via Curve Modeling in Analyzing Risk: Value Anticipation for Decision Making

Data Extrapolation via Curve Modeling in Analyzing Risk: Value Anticipation for Decision Making
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Author(s): Dariusz Jacek Jakóbczak (Technical University of Koszalin, Poland)
Copyright: 2016
Pages: 31
Source title: Analyzing Risk through Probabilistic Modeling in Operations Research
Source Author(s)/Editor(s): Dariusz Jacek Jakóbczak (Technical University of Koszalin, Poland)
DOI: 10.4018/978-1-4666-9458-3.ch001

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Abstract

Risk analysis needs suitable methods of data extrapolation and decision making. Proposed method of Hurwitz-Radon Matrices (MHR) can be used in extrapolation and interpolation of curves in the plane. For example quotations from the Stock Exchange, the market prices or rate of a currency form a curve. This chapter contains the way of data anticipation and extrapolation via MHR method and decision making: to buy or not, to sell or not. Proposed method is based on a family of Hurwitz-Radon (HR) matrices. The matrices are skew-symmetric and possess columns composed of orthogonal vectors. The operator of Hurwitz-Radon (OHR), built from these matrices, is described. Two-dimensional data are represented by the set of curve points. It is shown how to create the orthogonal and discrete OHR and how to use it in a process of data foreseeing and extrapolation. MHR method is interpolating and extrapolating the curve point by point without using any formula or function.

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