scholarly journals Modeling of innovative activity management processes in the region with use of fuzzy cognitive maps

Author(s):  
Vladimir Vasilyev ◽  
Liliya Chernyakhovskaya ◽  
Alexey Vulfin

The problem of analysis and management of innovative activity in the region on the example of organizing the Scientific and Educational Center (SEC) with use of cognitive modeling tools is considered. Based on the normative documents requirements, the fuzzy cognitive map (FCM) of the problem situation under consideration is constructed, with the help of which the expected values of the SEC target indicators and the effectiveness of the SEC functioning as a whole are estimated. It is shown that the use of the genetic algorithm at the stage of optimizing the FCM parameters allows us to obtain reasonable recommendations for improving the efficiency of SEC due to a more rational distribution of financial resources.

2020 ◽  
pp. short13-1-short13-8
Author(s):  
Ruslan Isaev ◽  
Aleksandr Podvesovskii

Verification of cognitive models is one of the most important stages in their construction, since reliability of results of subsequent modeling largely depends on the successful implementation of verification. The paper considers the problem of verifying cause-and-effect relationships in cognitive models based on the use of fuzzy cognitive maps. It is noted that increasing the effectiveness of cognitive model verification is possible by activating analyst's cognitive potential. The most natural way of such activation is to increase cognitive clarity of the model through the use of visualization capabilities. For this purpose, a number of metaphors for visualizing fuzzy cognitive maps have been proposed, aimed at increasing their cognitive clarity during verification. Each of the metaphors is focused on the visualization of a certain type of fragments of a fuzzy cognitive map potentially containing errors, redundancy or incompleteness and therefore of interest from the point of view of verification. The first considered visualization metaphor is intended to display the cycles that are part of a cognitive graph. The second metaphor focuses on the mapping of transitive paths between concepts. Finally, the third metaphor is aimed at eliminating cognitive model incompleteness, which consists in the lack of relationships between some concepts. Examples are given of applying the proposed visualization metaphors to increase cognitive clarity of the visual image of the verified fuzzy cognitive map.


Author(s):  
А.А. Захарова ◽  
А.Г. Подвесовский ◽  
Р.А. Исаев

В статье рассматривается проблематика моделирования слабоструктурированных социально-экономических систем на основе применения когнитивного подхода. Предлагается авторская информационная технология поддержки когнитивного моделирования таких систем, основанная на использовании нечетких когнитивных карт. Описывается опыт применения предложенной технологии и реализующей ее программной системы при решении ряда практических задач исследования стратегий управления социально- экономическими системами. The article deals with the problems of modeling semi-structured socio- economic systems based on the use of the cognitive approach. The original information technology for supporting the cognitive modeling of such systems based on the use of fuzzy cognitive maps is proposed. The experience of using the proposed technology and the software system that implements it in solving a number of practical problems of researching strategies for managing socio-economic systems is described.


Dependability ◽  
2019 ◽  
Vol 19 (4) ◽  
pp. 24-31
Author(s):  
A. Р. Rotshtein

Aim. Dependability simulation of a complex system starts with its structuring, i.e. partitioning into components (blocks, units, elements), for which probabilities of failure are known. The classical dependability theory uses the concept of structural function that allows ranking elements by their importance, which is required for optimal distribution of the resources allocated to ensuring system dependability. Man-machine systems are structured using an algorithmic description of discrete processes of operation, where the presence of clear boundaries between individual operations allows collecting statistical data on the probabilities of error that is required for modeling. Algorithmization is complicated in case of man-machine systems with continuous human activity, where the absence of clear boundaries between operations prevents the correct assessment of the probability of their correct performance. For that reason, the process of operation has to be considered as a single operation, whose correct performance depends on heterogeneous and interconnected human-machine system-related, technical, software-specific, managerial and other factors. The simulated system becomes a “black box” with unknown structure (output is dependability, inputs are contributing factors), while the problem of element ranking typical to the dependability theory comes down to the problem of factor ranking. Regression analysis is one of the most popular means of multifactor dependability simulation of man-machine systems. It requires a large quantity of experimental data and is not compatible with qualitative factors that are measured by expert methods. The “if – then” fuzzy rule is a convenient tool for expert information processing. However, regression analysis and fuzzy rules have a common limitation: they require independent input variables, i.e. contributing factors. Fuzzy cognitive maps do not have this restriction. They are a new simulation tool that is not yet widely used in the dependability theory. The Aim of the paper is to raise awareness of dependability simulation with fuzzy cognitive maps.Method. It is proposed – based on the theory of fuzzy cognitive maps – to rank factors that affect system dependability. The method is based on the formalization of causal relationships between the contributing factors and the dependability in the form of a fuzzy cognitive map, i.e. directed graph, whose node correspond to the system’s dependability and contributing factors, while the weighted edges indicate the magnitude of the factors’ effect on each other and the system’s dependability. The rank of a factor is defined as an equivalent of the element’s importance index per Birnbaum, which, in the probabilistic dependability theory is calculated based on the structure function.Results. Models and algorithms are proposed for calculation of the importance indexes of single factors and respective effects that affect system dependability represented with a fuzzy cognitive map. The method is exemplified by the dependability and safety of an automobile in the “driver-automobile-road” system subject to the driver’s qualification, traffic situation, unit costs of operation, operating conditions, maintenance scheduling, quality of maintenance and repair, quality of automobile design, quality of operational materials and spare parts, as well as storage conditions.Conclusions. The advantages of the method include: a) use of available expert information with no collection and processing statistical data; b) capability to take into account any quantitative and qualitative factors associated with people, technology, software, quality of service, operating conditions, etc.; c) ease of expansion of the number of considered factors through the introduction of additional nodes and edges of the cognitive map graph. The method can be applied to complex systems with fuzzy structures, whose dependability strongly depends on interrelated factors that are measured by means of expert methods.


Author(s):  
YUAN MIAO ◽  
ZHI-QIANG LIU ◽  
XUE HON TAO ◽  
ZHI QI SHEN ◽  
CHUN WEN LI

Fuzzy Cognitive Map (FCM) is a powerful and flexible framework for knowledge representation and causal inference. However, in most real applications, it is difficult to design and analyze FCMs due to their structural complexity. Simplification, merging, and division are the important operations on the structure of FCMs. In this paper we present approaches to simplifying FCMs. These approaches show how to clean up a FCM, how to divide a complex FCM into basic FCMs, and how to extract the eigen structure of these basic FCMs. Two improved methods for merging FCMs from different human experts are also proposed in this paper. We discuss difficulties in merging FCMs and present possible solutions.


2022 ◽  
Vol 10 (1) ◽  
Author(s):  
Mostafa Izadi ◽  
Hamidreza Seiti ◽  
Mostafa Jafarian

AbstractForesight has recently emerged as one of the most attractive and practical fields of study, while being used to draw up a preferable future and formulate appropriate strategies for achieving predetermined goals. The present research aimed at providing a framework for foresight with a primary focus on the role of a cognitive approach and its combination with the concept of fuzzy cognitive map in the environments of uncertainty and ambiguity. The proposed framework consisted of the 3 phases: pre-foresight, foresight, and post-foresight. The main stage (foresight) focused on the role of imagination and intuition in drawing the future in the experts’ minds and depicting their perceptions above perceptions in the form of a fuzzy cognitive map influenced by variables related to the subject under study in order to determine a preferable future. The use of a Z-number concept and integrating it with fuzzy cognitive maps in the foresight-oriented decision-making space, which was mainly saturated with uncertainty and ambiguity, was one of the main strengths of the proposed framework in the current investigation. The present paper focused primarily on the evolution of expert’s knowledge with regard to the topic of foresight. The role of Z-number in various processes, from data collection to illustration, analysis, and aggregation of cognitive maps, was considered for gaining knowledge and understanding into the nature of future. Moreover, an ultimate objective was realized through identifying, aggregating, and selecting the variables from each expert’s perspective and then the relationship between each variable was determined in the main stage of foresight. Finally, the proposed framework was presented and explicated in the form of a case study, which revealed satisfactory results.


2021 ◽  
Author(s):  
Norma Elizabeth Olvera Fuentes ◽  
Carlos Gay García

Currently the drinking water supply service system of the Metropolitan Area of Mexico City (ZMCM) faces serious problems in its operation, which generate highly negative impacts on the environmental, social and provider sectors of this system. Given the presence of climate change, we consider the possible scenario in which a decrease in average annual precipitation is generated in the area. To evaluate its impact on each of the sectors, the fuzzy cognitive map (FCM) associated with each of them was constructed. This framework allowed the study of a system that, in addition to being highly complex, the available information presented large ranges of uncertainty. Based on the resuls obtained, we present a mitigation measure for each sector, in order to provide efficient actions to decisions makers.


2015 ◽  
Vol 3 (4) ◽  
pp. 361-369
Author(s):  
Елена Панфилова ◽  
Elena Panfilova ◽  
Дарья Причина ◽  
Darya Prichina

The article deals with the specifics of the main factors of quality of corporate governance in the Russian Federation on the basis of global trends in corporate reporting "standardization" and "mathematization" of administrative decisions. The use of fuzzy cognitive maps in addition to the cognitive matrix, gives visibility and visualization semi factors allowing, with varying degrees of detail to systematize them as a target-driven, intermediate, promote and prevent. According to the Russian scientific community, among the 35 parameters, affecting the quality of corporate governance, according to the cognitive analysis to the dominant factors of mutual discord are the following: 1) inefficient system of quality management; 2) high transaction costs of interaction between participants of corporate governance; 3) concealment of material information; lack of a clear separation of functions of control and management stock ownership; 4) low standard of living; 5) low organization of monitoring and control in the redistribution of resources companies. The article concluded that cognitive modeling tools enable us to obtain qualitative information, which increases the level of soundness and integrity management solutions in the field of semi-parameters of corporate governance.


2019 ◽  
Vol 12 (1) ◽  
pp. 97-106
Author(s):  
E. A. Alpeeva ◽  
I. I. Volkova

Automation of enterprise management on the basis of economic and mathematical models, information technology is one of the main stages of development for all enterprises. The use of cognitive modeling allows making management decisions under uncertainty. The article considers the construction of an experimental model of automation of production accounting of material flows based on the use of fuzzy cognitive maps. The algorithm of cognitive modeling is presented. The main advantages of cognitive tools are noted: 1) the ability to study the fine structure of management decisions (the necessary sequence of management actions, the necessary degree of activity of these actions, the study of the dynamic stability of strategies, etc.); 2) the opportunity to explore the dynamics of management decisions at a qualitative level, without attracting for this purpose hard-to-access and not always reliable quantitative information, which is extremely important in a rapidly changing business environment and the growing pace of technological innovation.It is emphasized that none of the known management support tools has the above capabilities. Cognitive dynamic analysis significantly expands the tool base of management, based today mainly on the means of static situational analysis and prescription schemes of decision-making.In the construction of the experimental model, the target factors of the cognitive map are determined, the connectivity analysis is carried out and the process of propagation of disturbances on the graph is studied.The analysis showed that the proposed model is quite efficient and can be used to predict economic activity and determine the expected values of a number of parameters that need to be monitored to diagnose trends in the development of an industrial enterprise. The results of the work should be considered as a solution to a number of management tasks.


2021 ◽  
pp. 2-16
Author(s):  
Vladimir Vasilyev ◽  
◽  
Anastasia Kirillova ◽  
Alexey Vulfin ◽  
◽  
...  

Purpose: automation of complex attack vector modeling based on formalized CAPEC meta-pattern based on fuzzy cognitive maps. Methods: modeling a tool in the form of a graph with a further form of development in the form of a hierarchical fuzzy cognitive map for analysis using the potential level of detail and quantitative assessment of cybersecurity risks. Practical relevance: a scenario approach to modeling complex multistep targeted cyberattacks is proposed based on the draft Methodology for modeling security threats of the FSTEC of Russia and the base of meta- pattern for attacks CAPEC. The algorithm for “folding” a detailed fuzzy cognitive map of the attack vector is shown using the example of the threat of interception of control of an automated process control system of an oil company with an assessment of the probability of implementation, considering the severity level of exploited vulnerabilities. The main software modules of the system have been developed. Computational experiments were carried out to assess the effectiveness of its application. It is shown that as a result of analyzing the vector of cyberattacks in a fuzzy cognitive basis, an expert can rank possible scenarios of implementation, considering the vulnerabilities used, assess the level of danger of the implementation of each scenario separately and cyberattacks as a whole.


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