A Rank-Expert Deviation Function to Classify Complex Objects
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    A Rank-Expert Deviation Function to Classify Complex Objects

    Korobov, V.B., Tutygin, A.G., and Lokhov, A.S. A Rank-Expert Deviation Function to Classify Complex Objects

    Abstract. This paper proposes a novel function for classifying environmental, social, and socio-environmental objects. It is based on the sum of rank deviations between a given object and a reference object considering the significance of the object’s characteristics (factors). Characteristics are estimated using weight coefficients, which are provided by expertise or another method. A verbal numerical scale is developed to assess the proximity of objects by the numerical value of the deviation function. As is demonstrated below, this function is not a metric in the geometric sense but a proximity function defined in multidimensional scaling theory. As illustrative examples, the values of the deviation function are calculated for two applications: an environmental problem of comparing the vulnerability of territories to accidental oil spills and an economic problem of choosing real estate objects to purchase. A recommended sequence with a set of procedures based on the deviation function is presented to solve these problems.

    Keywords: rank, object, classification, verbal numerical scale.

    Funding. This work was performed within state order no. FMWE-2021-0006 “Modern and ancient bottom sediments and suspended sediments of the World Ocean­––a geological record of environmental and climate changes: dispersed sedimentary matter and bottom sediments of the seas of Russia, the Atlantic, Pacific and Arctic Oceans––lithological, geochemical, and micropaleontological studies; the research of pollution, paleoenvironments, and processes of marginal filters of rivers.”


    Cite this paper

    Korobov, V.B., Tutygin, A.G., and Lokhov, A.S., A Rank-Expert Deviation Function to Classify Complex Objects. Control Sciences 6, 48–55 (2023). http://doi.org/10.25728/cs.2023.6.5


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