NEURAL NETWORK MODELS AND METHODS IN THE TASKS OF PERSONNEL DEVELOPMENT MANAGEMENT IN COMPANIES
Section: ECONOMICS
Abstract and keywords
Abstract (English):
The article provides a structured analysis of the areas of application of mathematical methods and models in personnel management tasks. A technology is proposed that, together with neural network algorithms for predicting the success of a person in a company, allows the use of fuzzy expert technologies. It is emphasized that the practical use of the proposed methods and models makes it possible to move from solving individual problems of personnel management to a systematic approach to solving a complex of problems of human resource management.

Keywords:
management of personnel development, forecasting the success of a person in a company, neural network technologies, fuzzy linguistic technologies
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The neural network is rapidly entering production and management activities. Fierce competition poses problems for modern business that can be effectively solved with modern data analysis tools. Neural network technology allows you to analyze information, predict development and minimize risks when making decisions, which allows you to build a business on a strictly scientific basis competently and effectively.

Neural networks are designed similarly to the human nervous system, but in fact they use statistical analysis to recognize patterns from a large amount of information through adaptive learning [8]. Neural networks are a powerful modeling technique that can reproduce extremely complex dependencies. Neural networks learn by example. A neural network user selects representative data and then runs a learning algorithm that automatically perceives the data structure. Efficiency of work is achieved, firstly, from the parallelization of information processing, and secondly, from the ability to self-learn, i.e. create generalizations [7]. The term generalization refers to the ability to obtain a reasonable result based on data that was not encountered in the learning process. These properties allow neural networks to solve complex problems that are considered intractable today. However, in practice, when working autonomously, neural networks cannot provide ready-made solutions. They need to be integrated into complex systems [5].

Mathematical models and methods allow making decisions both in conditions when the influencing factors are known, and in conditions of limited availability of information, therefore, the possibility of real application of neural networks and their interaction with the company's information system.

Modern mathematical methods and models open up new opportunities for formalization, constructive development and increasing the efficiency of the company's personnel management methods.

The main areas of application of mathematical methods and models in personnel management problems are shown in Fig. 1.

 

Mathematical models and methods in personnel management problems

Methods and directions of modeling

Scope of application in tasks of personnel management

Game theory methods

- optimal coordination of the interests of the managing center and agents;

- analysis of conflict situations;

- formation of optimal information management strategies

Math modeling

- optimal planning of career growth processes and personnel renewal;

- study of stochastic processes of career growth in a company using the methods of queuing theory;

- development of effective mechanisms of motivation;

- development of optimal schemes for the allocation of resources to meet the multi-level needs of personnel;

- development of optimal strategies for professional adaptation of personnel in the company;

- development of optimal vocational training strategies

- study of the influence of innovative processes and technologies on the efficiency of personnel by means of a numerical experiment based on an algorithmic description of processes based on established normative, statistical, analytical and logical dependencies

- development of information systems and technologies for personnel management;

- analysis of information needs of personnel;

- development of evaluation algorithms and information processing programs;

- development of information management algorithms

- forecasting the success of personnel in the company in the hiring process;

- assessment of the performance of management personnel;

- identification of agents' preferences

- examination of management decisions in the field of personnel management;

- formation of systems for business assessment of personnel;

- identification of agents' preferences;

- identification of the strengths and weaknesses of the personnel management system;

- formation of competence models of specialists

- development of systems for business assessment of personnel;

- development and reengineering of organizational structures;

- development of strategies to improve the efficiency and quality of personnel management

- structuring information in relation to the tasks of analysis, forecasting and assessment of the effectiveness of the personnel management system

Simulation modeling

Semiotic models

Neural network models

Expert methods and technologies

Functional modeling

Cognitive modelinga

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Fig. 1. Spheres of application of mathematical models and methods in tasks of personnel management (Author's development)

The personnel development management system is a complex of organizational structures, methods, organizational and economic measures and resources that serve to fulfill the tasks of training, retraining and advanced training of personnel; organization of inventive and rationalization work; professional adaptation; evaluating candidates for a vacant position; ongoing periodic evaluation of personnel; business career planning; work with the personnel reserve.

Neural network models and methods as applied to the task of predicting the success of new candidates in various areas of professional activity in a company is one of the most urgent tasks of recruiting personnel [1]. The task of forecasting when hiring is set as follows: according to the input characteristics of the candidate used in the standard selection, to obtain an assessment of the special criteria of success in professional activity. Parameters of professional knowledge, skills, and abilities are used as input characteristics of candidates; autobiography data; characteristics associated with the peculiarities of the psycho-motivational mechanism of professional activity, purposefulness, activity, performance, cultural level, value orientations in life, value orientations in achieving goals, moral qualities; the level of professional flexibility, mobility, sociability, tolerance, computer literacy, proficiency in a foreign language, the employee's attitude to himself, the ability to establish business relationships, efficiency, discipline, confidence in success.

The general scheme of a neural network algorithm that solves the problem of predicting the success of candidates is shown in Fig. 2 [3, p. 123].

Along with neural network algorithms, fuzzy expert technologies can be used to predict the success of a person in a company [4]. This article proposes one such technology. It is assumed that the company assesses a set of specific competencies in the recruitment process. All competencies are represented as linguistic variables. Three models based on the competence database are introduced into consideration: the employer model, the applicant model and the evaluation model. The models of the employer and the applicant are sets of assessments of the linguistic importance of the analyzed competencies, and the assessment model is the level of expression (term) of each competence in the applicant.

 

 

Dedicated professional segment

Choosing a type of professional activity

Database for this type of professional activity

Input parameters characterizing candidate X

Output resulting parameters Y

 

Formation of data blocks for training, tuning and assessing the effectiveness of the network: a set of pairs (X, Y) for training the network; sets of pairs (X*, Y*) for network testing; validation set of pairs (X**, Y**)

Selection of the type of activation functions of the network (in the work, two-layer neural networks with sigmoidal activation functions are used)

Data coding according to the type of activation functions

Defining network parameters

Parameters used by the HR department in the selection for this position

Method of obtaining information

Measurement result

Parameters characterizing the degree of satisfaction of the employer and criteria for the success of professional activity

Method of obtaining information

Measurement result

Estimation of the complexity of the approximation problem using a neural network:

1) calculation of the sample Lipschitz constant ;

2) calculating the Lipschitz constant of the network ;

3) if , then data preprocessing is carried out

Network training by backpropagation of errors on data (X, Y)

Data network testing (X*, Y*) for tuning

Evaluating network performance on test data

low

satisfactory

Data network testing (X**, Y**) to evaluate performance

Evaluating network efficiency based on validation set data

low

satisfactory

Symptoms of the following problems:

- insufficient information content of the input parameters;

- insufficient validity of measurement methods;

- insufficient relevance of success criteria

Application of the network to predict the success of a candidate in a chosen type of professional activity:

1. Entering characteristics X.

2. Interpretation of Y's answer.

 
  Надпись: Dedicated professional segment

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Fig. 2. General scheme of the neural network mechanism

 

 

 

The structure of models for the manager profession is shown in Fig. 3 [3, p. 126].

 

Employer

 

Job seeker

- the need for dominance;

- analytical thinking;

- the ability to abstract;

- a tendency to work in a team;

- ability to delegate authority;

- the ability to clearly influence subordinates;

- consistency of thinking;

- justice;

- the ability to take responsibility;

- the ability to select the necessary information

 

 

 

 

 

       Model I                                                                                       Model W

Survey

center

 

 

 

 

                                                           Model R

 

Fig. 3. The structure of the model for predicting the success of a person in a company

Linguistic correlations between different models are calculated, for this the components of the models are ranked in a special way. On the basis of the obtained linguistic correlations, the rules of fuzzy inference are built and the success of a person in the company is assessed [3, p. 126].

Evaluation models in personnel management are the certification and business assessment of personnel, which can be further used in personnel development tasks. The task of using highly qualified personnel is especially important in the formation of the staff of innovative companies [9].

Consider an expert mechanism for the formation of models of competencies of specialists, which allows taking into account the opinion of the head of the company and a group of experts regarding the importance of various general and nuclear competencies, assessing the consistency within the expert group and consistency with the opinion of the head, building a hierarchical model of competencies and a mechanism for obtaining a comprehensive assessment of competence [2].

Suppose there is some hierarchical model of competencies [3, p. 128]. To obtain a comprehensive assessment of competence in accordance with the hierarchical model, it is necessary to expertly determine the relationship of preference between different competencies. To identify preference relationships, a formalized algorithm for the activities of an expert group headed by the head of the company is used. All experts fill in the matrices of the preference relationship between the competencies of the lower level of the hierarchy in the linguistic scale. Various aspects of the consistency of the opinion of experts are assessed, a group of experts is singled out, coordinated with each other and with the opinion of the head. For this group, a group preference relation is built between the competencies of the lower level, and the preference relation between the competences of higher levels is built according to special rules. Linguistic logical convolution matrices are formed in relation to the preference relation between the competencies, and using the complex assessment mechanism, an assessment of the upper level of the hierarchy is obtained - the employee's competence.

There is a set of competencies  X = {x1, x2, ..., xn}.

Each competence corresponds to the degree of significance of the inclusion of this competence in the analysis from the position of the leader W = {w1, w2, ..., wn}, expressed in a linguistic scale. In this case, the V = {V1, V2, ..., V7} scale will be used to assess the importance of including competencies in the analysis from a manager's perspective. Competencies are assessed according to their importance by a group of experts E = {e1, e2, ...ep},each of which is characterized by their competence gk, also expressed in the linguistic scale V. The head of the company is considered as an e1 expert, he is assigned a special role in the examination.

Each expert ek forms his opinion in the form of a linguistic preference relation Pk, according to which any pair of competencies (xi, xj) is associated with a term of a linguistic variable C (term-set S = {S1, S2, ..., S9}), reflecting superiority in importance from the point of view of an expert of competence xi in comparison with competence xj. The preference relationships compiled by different experts may differ. To assess the closeness of the opinions of two experts, a special table of proximity D,is used, the elements of which d(Si, Sj), given in the linguistic scale V, show how close the terms Si and Sj of the S scale are.

The main stages of the considered algorithm are given in [3, p. 127-129]. The algorithm partially uses the approach of assessing the consistency of expert judgments proposed by domestic researchers [6]. The competency model, built in accordance with the approach described above, allows long-term planning and forecasting of the necessary human resources, quickly and efficiently forming a personnel reserve. Training planning is also systematized and becomes more focused, a transition is made from solving individual problems to real human resource management.

Thus, the introduction of the latest intelligent systems in personnel management allows us to make a qualitative leap in management and increase the efficiency of personnel selection for productive work in the company.

References

1. Azarnova T.V. Neural network technologies for predicting the success of young specialists in the main directions of advertising / T.V. Azarnova, I.N. Ternovykh // Bulletin of INZHEKON. Ser.: Economics. 2012. Iss. 1 (52). P. 482-486.

2. Azarnova T.V. The procedure for processing expert linguistic information in the formation of competency models for employees of the bank's collection unit / T.V. Azarnova, I.N. Ternovykh, R.V. Ryndin // Modern Economics: Solution Problems. 2012. № 3 (27). P. 117-128.

3. Azarnova T.V., Stepin V.V., Shchepina I.N. Improving the efficiency of personnel development management methods based on neural network models and fuzzy expert technologies // Bulletin of VSU. Series: Economics and Management. 2014. № 3. P. 121-130.

4. Borisov A.N. Fuzzy information processing in decision-making systems / A.N. Borisov, A.V. Alekseev, G.V. Merkuriev. - M.: Radio and communication, 1989. - 304 P.

5. Jones M.T. Artificial Intelligence Programming in Applications / Transl. from Eng. A.I. Osipov. - 2-nd ed. - M.: DMK Press, 2011. - 312 P.

6. Ledeneva T.M. Coordination of linguistic expert assessments in the group choice procedure / T.M. Ledeneva, K.S. Poghosyan // Vestnik VSU. Series: System Analysis and Information Technology. 2010. № 2. P. 125-130.

7. Serebryakova T.A., Serebryakov V.G. The use of neural networks in the financial analysis of the activities of large economic structures // Electronic scientific publication "Scientific Notes of PNU", 2014. V. 5. № 4. P. 165.

8. Fedotova E.L. Information technology in professional activities. - M.: ID "Forum": INFRA-M, 2018. - 367 P.

9. Shchepina I.N. Innovative activity at the regional level: types of behavior of regions and their sustainability. - Voronezh: Publishing and polygraph. center of the Voronezh state. un-ty,2012. - 162 P.

10. Azarnova T.V. Neural network technologies for predicting the success of young specialists in the main directions of advertising / T.V. Azarnova, I.N. Ternovykh // Bulletin of INZHEKON. Ser.: Economics. 2012. Iss. 1 (52). P. 482-486.

11. Azarnova T.V. The procedure for processing expert linguistic information in the formation of competency models for employees of the bank's collection unit / T.V. Azarnova, I.N. Ternovykh, R.V. Ryndin // Modern Economics: Solution Problems. 2012. № 3 (27). P. 117-128.

12. Azarnova T.V., Stepin V.V., Shchepina I.N. Improving the efficiency of personnel development management methods based on neural network models and fuzzy expert technologies // Bulletin of VSU. Series: Economics and Management. 2014. № 3. P. 121-130.

13. Borisov A.N. Fuzzy information processing in decision-making systems / A.N. Borisov, A.V. Alekseev, G.V. Merkuriev. - M.: Radio and communication, 1989. - 304 P.

14. Jones M.T. Artificial Intelligence Programming in Applications / Transl. from Eng. A.I. Osipov. - 2-nd ed. - M.: DMK Press, 2011. - 312 P.

15. Ledeneva T.M. Coordination of linguistic expert assessments in the group choice procedure / T.M. Ledeneva, K.S. Poghosyan // Vestnik VSU. Series: System Analysis and Information Technology. 2010. № 2. P. 125-130.

16. Serebryakova T.A., Serebryakov V.G. The use of neural networks in the financial analysis of the activities of large economic structures // Electronic scientific publication "Scientific Notes of PNU", 2014. V. 5. № 4. P. 165.

17. Fedotova E.L. Information technology in professional activities. - M.: ID "Forum": INFRA-M, 2018. - 367 P.

18. Shchepina I.N. Innovative activity at the regional level: types of behavior of regions and their sustainability. - Voronezh: Publishing and polygraph. center of the Voronezh state. un-ty,2012. - 162 P.

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