The problem of evaluation and selection of parking lots is a part of significant issues of public transport management in cities. As population expands as well as urban areas, solving the mentioned issues affects employees, security and safety of citizens, and quality of life in long-time period. The aim of this paper is to propose a multicriteria decision model which includes both quantitative and qualitative criteria, which may be of either benefit or cost type, to evaluate locations. The criteria values and the importance of criteria are either precise or linguistic expressions defined by trapezoidal fuzzy numbers. The human judgments of the relative importance of evaluation criteria and uncertain criteria values are often vague and cannot be expressed by exact precise values. The ranking of locations with respect to all criteria and their weights is performed for various degrees of pessimistic-optimistic index. The proposed model is tested through an illustrative example with real life data, where it shows the practical implications in public communal enterprises.
Abstract:The business environment is rapidly changing and puts pressure on enterprises to find effective ways to survive and develop. Since it is almost impossible to identify the multitude of complex conditions and business risks, an organization has to build its resilience in order to be able to overcome issues and achieve long term sustainability. This paper contributes by establishing a two-step model for assessment and enhancement of organizational resilience potential oriented towards Small and Medium Enterprises (SMEs) in the process industry. Using a dynamic modelling technique and statistical tools, a sample of 120 SMEs in Serbia has been developed as a testing base, and one randomly selected enterprise was used for model testing and verification. Uncertainties regarding the relative importance of organizational resilience potential factors (ORPFs) and their value at each level of business are described by pre-defined linguistic expressions. The calculation of the relative importance of ORPFs for each business level is stated as a fuzzy group decision making problem. First, the weighted ORPFs' values and resilience potential at each business level are determined. In the second step, near optimal enhancement of ORPFs' values is achieved by applying a genetic algorithm (GA).
In this paper we solve the problem of static portfolio allocation based on
historical Value at Risk (VaR) by using genetic algorithm (GA). VaR is a
predominantly used measure of risk of extreme quantiles in modern finance.
For estimation of historical static portfolio VaR, calculation of time series
of portfolio returns is required. To avoid daily recalculations of proportion
of capital invested in portfolio assets, we introduce a novel set of weight
parameters based on proportion of shares. Optimal portfolio allocation in the
VaR context is computationally very complex since VaR is not a coherent risk
metric while number of local optima increases exponentially with the number
of securities. We presented two different single-objective and a
multiobjective technique for generating mean-VaR efficient frontiers. Results
document good risk/reward characteristics of solution portfolios while there
is a trade-off between the ability to control diversity of solutions and
computation time. [Projekat Ministartsva nauke Republike Srbije, br.
III-44010 i br. OH 179005]
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