Результаты поиска по 'modeling methods':
Найдено статей: 480
  1. Sereda-Kalinin P.Y., Vlasova A.S.
    Explainable artificial intelligence: principles, methods and applications
    Computer Research and Modeling, 2026, v. 18, no. 2, pp. 211-241

    Explainable Artificial Intelligence (XAI) is a field of artificial intelligence aimed at creating methods and tools for generating interpretable and human-understandable explanations of AI decisions. The relevance of model explainability increases with the deployment of artificial intelligence in critical domains (healthcare, finance, law), where algorithmic opacity can lead to serious consequences for users and society. This work presents an analytical review of the current state of the XAI field, covering theoretical foundations, methodology, and practical applications.

    The examined explainable AI methods were selected and systematized based on a multi-level classification of XAI methods by problem formulation (goal, target audience, data type), methodology (application stage, model-specificity, methods, scale), and result form (representation, presentation, evaluation metrics).

    A comparative analysis of explainable AI methods for various application domains is conducted. For classical machine learning, SHAP and LIME are examined in detail, revealing their theoretical foundations, computational characteristics, and limitations. For computer vision, gradient-based methods (SmoothGrad, Integrated Gradients), activation visualization methods (Grad-CAM, Grad-CAM++), perturbation-based methods (RISE, Occlusion), and conceptual explanations (TCAV, Network Dissection) are systematized. Special attention is paid to the specifics of applying XAI to natural language processing and large language models, including analysis of the faithfulness of Chain-of-Thought reasoning, natural language explanations, and attribution graph methods. Fundamental limitations of existing approaches to LLM explainability are identified and directions for future research are defined.

    The review results demonstrate that XAI methods have reached significant maturity in classical machine learning and computer vision, however, their application to large language models remains an open research problem requiring the development of new explanation paradigms.

  2. Chernov I.A., Manicheva S.V.
    Adjoint grid parabolic quazilinear boundary-value problems
    Computer Research and Modeling, 2012, v. 4, no. 2, pp. 275-291

    In the paper we construct the adjoint problem for the explicit and implicit parabolic quazi-linear grid boundary-value problems with one spatial variable; the coefficients of the problems depend on the solution at the same time and earlier times. Dependence on the history of the solution is via the state vector; its evolution is described by the differential equation. Many models of diffusion mass transport are reduced to such boundary-value problems. Having solutions to the direct and adjoint problems, one can obtain the exact value of the gradient of a functional in the space of parameters the problem also depends on. We present solving algorithms, including the parallel one.

    Views (last year): 1.
  3. Chernov I.A., Ivashko E.E., Nikitina N.N., Gabis I.E.
    Numerical identification of the dehydriding model in a BOINC-based grid system
    Computer Research and Modeling, 2013, v. 5, no. 1, pp. 37-45

    In the paper we consider the inverse problem of evaluating kinetic parameters of the model of dehydriding of metal powder using experimental data. The «blind search» in the space of parameters revealed multiple physically reasonable solutions. The solutions were obtained using high–performance computational modeling based on BOINC–grid.

    Citations: 6 (RSCI).
  4. Karaban V.M., Sukhorukov M.P.
    The mathematical formulation of the temperature control chip within a three-dimensional model and the solution method
    Computer Research and Modeling, 2013, v. 5, no. 5, pp. 805-812

    The work deals the implementation of a three-dimensional mathematical model of the nonlinear time-varying temperature control and a numerical method of solving it.

    Views (last year): 1. Citations: 1 (RSCI).
  5. Yakovleva T.V.
    Review of MRI processing techniques and elaboration of a new two-parametric method of moments
    Computer Research and Modeling, 2014, v. 6, no. 2, pp. 231-244

    The paper provides a review of the existing methods of signals’ processing within the conditions of the Rice statistical model applicability. There are considered the principle development directions, the existing limitations and the improvement possibilities concerning the methods of solving the tasks of noise suppression and analyzed signals’ filtration by the example of magnetic-resonance visualization. A conception of a new approach to joint calculation of Rician signal’s both parameters has been developed based on the method of moments in two variants of its implementation. The computer simulation and the comparative analysis of the obtained numerical results have been conducted.

    Citations: 10 (RSCI).
  6. Vlasenko V.D., Verhoturov A.D.
    Numerical research elastic and strength characteristics of materials with coverings, received by an electrospark alloying
    Computer Research and Modeling, 2014, v. 6, no. 5, pp. 671-678

    In the work is numerically investigated the influence of elastic and strength characteristics of hard materials with coatings of refractory compounds, received electric-spark doping, at influence of temperature and power factors using the finite element method.

    Views (last year): 3. Citations: 5 (RSCI).
  7. Borodachev L.V., Kolomiets D.O.
    Parallel calculations in the Darwin PIC-model
    Computer Research and Modeling, 2015, v. 7, no. 1, pp. 61-69

    The approach to parallel implementation of low-frequency PIC-algorithms is proposed, taking into account peculiarity of the nonradiative (Darwin) field approximation. Its advantages and specifics of adaptation to the base computer types for high performance calculations are discussed.

    Views (last year): 2.
  8. Shumixin A.G., Boyarshinova A.S.
    Algorithm of artificial neural network architecture and training set size configuration within approximation of dynamic object behavior
    Computer Research and Modeling, 2015, v. 7, no. 2, pp. 243-251

    The article presents an approach to configuration of an artificial neural network architecture and a training set size. Configuration is based on parameter minimization with constraints specifying neural network model quality criteria. The algorithm of artificial neural network architecture and training set size configuration is applied to dynamic object artificial neural network approximation.
    Series of computational experiments were performed. The method is applicable to construction of dynamic object models based on non-linear autocorrelation neural networks.

    Views (last year): 2. Citations: 8 (RSCI).
  9. Bakhvalov Y.N., Kopylov I.V.
    Training and assessment the generalization ability of interpolation methods
    Computer Research and Modeling, 2015, v. 7, no. 5, pp. 1023-1031

    We investigate machine learning methods with a certain kind of decision rule. In particular, inverse-distance method of interpolation, method of interpolation by radial basis functions, the method of multidimensional interpolation and approximation, based on the theory of random functions, the last method of interpolation is kriging. This paper shows a method of rapid retraining “model” when adding new data to the existing ones. The term “model” means interpolating or approximating function constructed from the training data. This approach reduces the computational complexity of constructing an updated “model” from $O(n^3)$ to $O(n^2)$. We also investigate the possibility of a rapid assessment of generalizing opportunities “model” on the training set using the method of cross-validation leave-one-out cross-validation, eliminating the major drawback of this approach — the necessity to build a new “model” for each element which is removed from the training set.

    Views (last year): 7. Citations: 5 (RSCI).
  10. Alekseenko A.E., Kholodov Y.A., Kholodov A.S., Goreva A.I., Vasilev M.O., Chekhovich Y.V., Mishin V.D., Starozhilets V.M.
    Development, calibration and verification of mathematical model for multilane urban road traffic flow. Part I
    Computer Research and Modeling, 2015, v. 7, no. 6, pp. 1185-1203

    In this paper, we propose the unified procedure for the development and calibration of mathematical model for multilane urban road traffic flow. We use macroscopic approach, describing traffic flow with the system of second-order nonlinear hyperbolic equations (for traffic density and velocity). We close the resulting model with the equation of vehicle flow as a function of density, obtained empirically for each segment of road network using data from traffic detectors and vehicles’ GPS tracks. We verify the developed new model and calibration methods by using it to model segment of Moscows Ring Road.

    Views (last year): 4. Citations: 2 (RSCI).
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