E3S Web Conf.
Volume 174, 2020Vth International Innovative Mining Symposium
|Number of page(s)||10|
|Section||Mining Regions’ Sustainable Development|
|Published online||18 June 2020|
A Review of Methods for Processing Unstructured Data in the Assessment of Mining Personnel
1 T.F. Gorbachev Kuzbass State Technical University, Mezhdurechensk Branch, 652881, Mezhdurechensk, Russia
2 T.F. Gorbachev Kuzbass State Technical University, 650000, Vesennyaya str., 28, Kemerovo, Russia
3 East Carolina University, 27858, E 5th St., Greenville, NC, USA
* Corresponding author: email@example.com
Skilled staff, as well as conditions for their development and motivation, are key conditions for the successful operation of the company. Creation of a high-quality Human Resources (HR) personnel management system would allow to solve this problem. For the achievement of the ultimate goal - the most effective formation and development of the personnel potential of the enterprise requires the creation of conditions for all employees allowing the maximum use and increase of labour potential, as well use of creative abilities and creative thinking. Labour competences and competence evaluation represent real challenges for companies. When modelling a high-quality HR management system, it is important to take into account features such as presence of uncertainty and a large number of unstructured data. When evaluating personnel, the cognitive abilities of the decision-maker are involved and the use of fuzzy cognitive modeling (FCM) seems to be the most promising. In addition, cognitive models allow us to present complex relationships between investigated parameters revealing influence on each other. This paper considers an expert performance evaluation system based on competency model and a fuzzy logic model. The FCM based management personnel system’s is proposed. There are many performance evaluation methods; however, none is universal and common to all companies. This work brings contributions to HR management solutions, finding new ways to apply artificial intelligence (AI) techniques to processes that typically were performed by humans.
© The Authors, published by EDP Sciences, 2020
This is an Open Access article distributed under the terms of the Creative Commons Attribution License 4.0, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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