Результаты поиска по 'aggregate uncertainty':
Найдено статей: 3
  1. Varshavsky L.E.
    Uncertainty factor in modeling dynamics of economic systems
    Computer Research and Modeling, 2018, v. 10, no. 2, pp. 261-276

    Analysis and practical aspects of implementing developed in the control theory robust control methods in studying economic systems is carried out. The main emphasis is placed on studying results obtained for dynamical systems with structured uncertainty. Practical aspects of implementing such results in control of economic systems on the basis of dynamical models with uncertain parameters and perturbations (stabilization of price on the oil market and inflation in macroeconomic systems) are discussed. With the help of specially constructed aggregate model of oil price dynamics studied the problem of finding control which provides minimal deviation of price from desired levels over middle range period. The second real problem considered in the article consists in determination of stabilizing control providing minimal deviation of inflation from desired levels (on the basis of constructed aggregate macroeconomic model of the USA over middle range period).

    Upper levels of parameters uncertainty and control laws guaranteeing stabilizability of the real considered economic systems have been found using the robust method of control with structured uncertainty. At the same time we have come to the conclusion that received estimates of parameters uncertainty upper levels are conservative. Monte-Carlo experiments carried out for the article made it possible to analyze dynamics of oil price and inflation under received limit levels of models parameters uncertainty and under implementing found robust control laws for the worst and the best scenarios. Results of these experiments show that received robust control laws may be successfully used under less stringent uncertainty constraints than it is guaranteed by sufficient conditions of stabilization.

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  2. Belotelov N.V., Loginov F.V.
    The agent model of intercultural interactions: the emergence of cultural uncertainties
    Computer Research and Modeling, 2022, v. 14, no. 5, pp. 1143-1162

    The article describes a simulation agent-based model of intercultural interactions in a country whose population belongs to different cultures. It is believed that the space of cultures can be represented as a Hilbert space, in which certain subspaces correspond to different cultures. In the model, the concept of culture is understood as a structured subspace of the Hilbert space. This makes it possible to describe the state of agents by a vector in a Hilbert space. It is believed that each agent is described by belonging to a certain «culture». The number of agents belonging to certain cultures is determined by demographic processes that correspond to these cultures, the depth and integrity of the educational process, as well as the intensity of intercultural contacts. Interaction between agents occurs within clusters, into which, according to certain criteria, the entire set of agents is divided. When agents interact according to a certain algorithm, the length and angle that characterize the state of the agent change. In the process of imitation, depending on the number of agents belonging to different cultures, the intensity of demographic and educational processes, as well as the intensity of intercultural contacts, aggregates of agents (clusters) are formed, the agents of which belong to different cultures. Such intercultural clusters do not entirely belong to any of the cultures initially considered in the model. Such intercultural clusters create uncertainties in cultural dynamics. The paper presents the results of simulation experiments that illustrate the influence of demographic and educational processes on the dynamics of intercultural clusters. The issues of the development of the proposed approach to the study (discussion) of the transitional states of the development of cultures are discussed.

  3. Serkov L.A., Krasnykh S.S.
    Combining the agent approach and the general equilibrium approach to analyze the influence of the shadow sector on the Russian economy
    Computer Research and Modeling, 2020, v. 12, no. 3, pp. 669-684

    This article discusses the influence of the shadow, informal and household sectors on the dynamics of a stochastic model with heterogeneous (heterogeneous) agents. The study uses the integration of the general equilibrium approach to explain the behavior of demand, supply and prices in an economy with several interacting markets, and a multi-agent approach. The analyzed model describes an economy with aggregated uncertainty and with an infinite number of heterogeneous agents (households). The source of heterogeneity is the idiosyncratic income shocks of agents in the legal and shadow sectors of the economy. In the analysis, an algorithm is used to approximate the dynamics of the distribution function of the capital stocks of individual agents — the dynamics of its first and second moments. The synthesis of the agent approach and the general equilibrium approach is carried out using computer implementation of the recursive feedback between microagents and macroenvironment. The behavior of the impulse response functions of the main variables of the model confirms the positive influence of the shadow economy (below a certain limit) on minimizing the rate of decline in economic indicators during recessions, especially for developing economies. The scientific novelty of the study is the combination of a multi-agent approach and a general equilibrium approach for modeling macroeconomic processes at the regional and national levels. Further research prospects may be associated with the use of more detailed general equilibrium models, which allow, in particular, to describe the behavior of heterogeneous groups of agents in the entrepreneurial sector of the economy.

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