Research and Development of a Unified Methodology for Assessing the Resource Efficiency of International Digital Platform Promotion for E-Learning
Abstract
:1. Introduction
2. Literature Review
3. Research Methods
- (1)
- The creation of an optimization criterion altogether with restrictions on making decisions;
- (2)
- Task solution by familiar methods in the case of reduction it to a typical optimization model;
- (3)
- In case of inability to reduce to a standard model, the formation of a set of admissible options for management decisions based on expert or calculated information and the choice of the best one according to the adopted optimization criterion.
- —is the total volume of admission check figures for Bachelor’s studies;
- —is the total volume of admission check figures for Master’s degree course;
- —is the total volume of admission check figures for Postgraduate studies;
- —is the total volume of admission check figures when teaching students specialties.
- —the cost for one student training who is enrolled into the Bachelor’s program;
- —the cost for one student training who is enrolled into the Master’s degree program;
- —the cost for one student training who is enrolled into the Postgraduate program;
- —the cost for one student training who is enrolled into the program for obtaining a certain specialty.
- -
- The implementation of the task of admission check figures correlation when teaching students for a Bachelor’s program, a Master’s program, as well as a Postgraduate program. An adjustment is made of the normalized volume of certain study spheres (technical orientation directions and others). These conditions will be characterized in the form of significance indexes of any of the training programs in the total volume of admission check figures:
- -
- Teaching process expenditures in relation to all education programs, which are paid for by the state budget, must match the allocated funds R:
- -
- If required, to take stock of the reduction in the number of students who graduated from school, and also, if needed, to find a middle-ground between the state needs for competent specialists, as shown by significance coefficients (1). In the interest of citizens in the proposed training programs, it is necessary to note the target admission check figures for the previous time period:
- —is the amount of ACF allocated by the federal level to the n-th region according to a certain educational program;
- —is the amount of ACF, allocated by the federal level to the n-th country under a certain agreement between countries with a certain educational program;
- —is the need of the n-th regional education in trained specialists;
- —is the need of the n-th country for qualified personnel;
- —is the volume of admission check figures ACF, which are distributed according to the federal level;
- —is, respectively, the share of students enrolled in the n-th region or the country as a whole under the federal budget funding for a particular educational program in the previous calendar period at the expense of the federal budget with an average USE score higher than the required threshold. This is established when evaluating high schools on the effectiveness of their educational programs by means of monitoring [17,18].
- (1)
- Consider options for the distribution of x between the regional, international , and federal areas, given by the experts.
- (2)
- The option of proportional distribution of the volume of between regions and countries is considered:
- (3)
- The option of proportional distribution of the volume of between regions and countries according to the principle of reverse priorities is considered [19].
- (1)
- Parameter distribution:
- (2)
- Proportionate distribution, taking into account the potential of educational institutions (see Item 1.1):
- (3)
- Distribution in which inverse priorities are used, taking into account the potential of educational institutions:
- -
- Solutions of the highest priority;
- -
- Solutions that do not have the proper effect;
- -
- Solutions where their probable priority is less than 0.5.
- (1)
- Did the dominant expert correctly evaluate the solution of regarding groups 1 and 2?
- (2)
- Did the dominant expert correctly evaluate the solution of regarding group 2?
- (3)
- Does the expert, who has the number believe that the probability of priority of the decision will be more than 0.5?
- (4)
- Did the dominant expert rightly attribute the decision of to group 1?
- -
- There are three methods by which volume parameters are allocated-parametric allocation, proportional allocation, and an allocation in which inverse priorities are applied;
- -
- Volume parameters are distributed with respect to any j-th training program , which are set with division by federation level and by any region . That will eventually lead to a wide variety of combinations of resource bases at the federal and regional levels when they are allocated to educational institutions, applying the criterion that determines the degree of efficiency of budget spending.
- (1)
- The method of conducting an examination as part of the group is used, whereafter its results are processed and a decision is made, the number d = (2,D) f experts will participate in this process. The following procedure is recommended. It is called the commission methodology, in which experts in the number of d = (2,D) openly discuss among themselves, evaluating options, using informal indicators that determine the effectiveness of resource use, after which a vote is held among them. The decision is made by the majority of votes [22]: the option for which most of the experts voted will be the best solution. With another method, at the end of the discussion, experts assign to any rank definition expressed as an integer by r = (1,L) variants, after which a priori ranking is carried out [6]. An effective option would be where .
- (2)
- According to another methodology, the most effective option is selected, according to which the volume parameters will be distributed [23].
- (3)
- When an option is obtained, it is presented to the dominant expert. The decision is made on the basis of his decision, but without the use of multiple options , however, without using many options and changing the volume parameters relative to High Schools moving from . To do this, it is necessary to recalculate the admission check figures for the rest of the high schools that have the numbers .
- (4)
- The new resource by federal level is as:
- (1)
- New options to distribute the admission check figures with initial data (Equations (19) and (20)).
- (2)
- The most effective option will be selected by a group of experts, as presented in item 1.
- (3)
- The option is suggested to the dominant expert.
- (4)
- If the submitted option is approved, a normative document is created, which records this fact.
- (5)
- In the reverse situation, stages from 3 to 8 are repeated.
4. Results and Discussion
- (1)
- Request mode for generation of monitoring and other initial information necessary for management decisions;
- (2)
- An expert mode for selecting a method for processing monitoring information to obtain integral estimates, the direction of their use and the structure of optimization management tasks;
- (3)
- Automatic mode of calculation of integral rating assessment and potential of educational organization based on mathematical models;
- (4)
- Automatic mode of optimization modeling of management decision options;
- (5)
- An expert mode for selecting the final management decision.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Preschool Education | General Secondary Education | Supplementary School Education | Higher Education | Vocational Secondary Education | Supplementary Vocational Education | Language Learning | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
2016 | 2021 | 2016 | 2021 | 2016 | 2021 | 2016 | 2021 | 2016 | 2021 | 2016 | 2021 | 2016 | 20 |
462 bln | 548 bln | 572 bln | 699 bln | 130 bln | 149 bln | 386 bln | 336 bln | 146 bln | 175 bln | 105 bln | 103 bln | 26.8 bln | 24.6 bln |
Share of private business | |||||||||||||
9.7% | 9.6% | 5% | 5.8% | 100% | 100% | 8.9% | 7.9% | 4.4% | 5.5% | 73% | 73 | 95.2% | N/A |
Online education | |||||||||||||
0.1% | 0.3% | 0% | 1.5% | 2.7% | 6.8% | 1.8% | 4.4% | 0.4% | 1% | 6.7% | 10.9% | 5.8% | 15.9% |
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Share and Cite
Seleznev, P.S.; Naumov, V.N.; Zorin, V.Y.; Zelenov, V.I.; Tsyplenkov, D.S.; Vasiliev, V.G. Research and Development of a Unified Methodology for Assessing the Resource Efficiency of International Digital Platform Promotion for E-Learning. Symmetry 2022, 14, 497. https://doi.org/10.3390/sym14030497
Seleznev PS, Naumov VN, Zorin VY, Zelenov VI, Tsyplenkov DS, Vasiliev VG. Research and Development of a Unified Methodology for Assessing the Resource Efficiency of International Digital Platform Promotion for E-Learning. Symmetry. 2022; 14(3):497. https://doi.org/10.3390/sym14030497
Chicago/Turabian StyleSeleznev, Pavel Sergeevich, Vladimir Nikolaevich Naumov, Vladimir Yurievich Zorin, Vladimir Igorevich Zelenov, Dmitry Sergeevich Tsyplenkov, and Vladimir Gennadievich Vasiliev. 2022. "Research and Development of a Unified Methodology for Assessing the Resource Efficiency of International Digital Platform Promotion for E-Learning" Symmetry 14, no. 3: 497. https://doi.org/10.3390/sym14030497
APA StyleSeleznev, P. S., Naumov, V. N., Zorin, V. Y., Zelenov, V. I., Tsyplenkov, D. S., & Vasiliev, V. G. (2022). Research and Development of a Unified Methodology for Assessing the Resource Efficiency of International Digital Platform Promotion for E-Learning. Symmetry, 14(3), 497. https://doi.org/10.3390/sym14030497