Preparation for Entering a Higher Educational Institution as an Investment Project

Q2 Social Sciences Open Education Studies Pub Date : 2023-03-09 DOI:10.21686/1818-4243-2023-1-36-50
V. Kataeva, V. R. Masalkina, A. A. Ponomareva
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Abstract

The purpose of the study is to develop an algorithm for managing investments in preparation for entering a higher educational institution as an investment project.Materials and methods. The study includes a review of bibliographic sources on the existing methods and approaches to determining the economic efficiency of preparing for admission to a higher educational institution, as well as methods for assessing the effectiveness of investment projects. It also includes the collection and analysis of a statistical set of data and the development of a mechanism for choosing a training method with the available data about the applicant through neural network modeling.Results. A number of factors influencing the effectiveness of preparing an applicant for admission are considered. The effectiveness of the main trajectories of preparation for admission is evaluated by modeling the results of the collected statistical population, in particular: school preparation, tutoring, additional courses. Neural network models are created to determine the relationship between the factors influencing the result of preparation for admission and to make a choice to determine the significance of the applicant’s input parameters for various training trajectories. In accordance with the selected data, a neural network model is being developed to select the optimal trajectory for preparing for admission to a higher educational institution. As a result of creating a neural network model, a mathematical model is designed to determine the most optimal training method. Preparation for admission is considered as an investment project. By applying the method of evaluating the effectiveness of an investment project and the approach to managing it, based on the created model, an algorithm is described for choosing the best trajectory for preparing for admission to a higher educational institution, which allows applicants to independently evaluate investments in training as an investment project and choose the most cost-effective way of training. By adapting the method of assessing the economic efficiency of investments by discounting cash flows used in the business environment, a methodology was formulated for choosing the most optimal training trajectory.Conclusion. It can be argued that it makes sense to consider investments in additional preparation for a high school student to enter a higher educational institution as an investment project in which the parent acts as an investor, and the goal of the project is to enter a higher educational institution. To assess the effectiveness of investments in training and competent management of them, an algorithm has been developed for choosing the most cost-effective trajectory of preparation for entering a higher educational institution, using the example of admission to the Perm State National Research University. The algorithm is based on a neural network model that takes into account the input parameters of students: the duration of training, the frequency of additional classes, the level of motivation and average performance as factors influencing the probability of entering a higher educational institution. The algorithm is designed and can be used to manage investments in additional education of the child by determining the most cost-effective way to use financial resources. It is expedient to use the developed algorithm in those cases when the final goal involves the admission of a child to an educational institution. In this case, the use of the model will offer the best training path from an economic point of view for a particular applicant, taking into account the input parameters.
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作为投资项目进入高等学校的准备工作
本研究的目的是开发一种算法来管理作为投资项目进入高等教育机构的投资。材料和方法。这项研究包括审查关于确定高等教育机构入学准备的经济效率的现有方法和途径的书目来源,以及评估投资项目有效性的方法。它还包括收集和分析一组统计数据,并通过神经网络建模开发一种机制,根据申请人的可用数据选择训练方法。考虑到影响申请人入学准备有效性的一些因素。通过对收集的统计人口的结果进行建模,特别是:学校准备,辅导,额外课程,来评估入学准备的主要轨迹的有效性。建立神经网络模型,确定影响入学准备结果的因素之间的关系,并选择确定申请人输入参数对各种训练轨迹的重要性。根据所选择的数据,正在开发一个神经网络模型,以选择准备进入高等教育机构的最佳轨迹。通过建立神经网络模型,设计数学模型来确定最优的训练方法。准备入学视为一项投资项目。运用投资项目的有效性评估方法和管理方法,基于所建立的模型,描述了一种选择最佳入学准备轨迹的算法,该算法允许申请人将培训投资作为投资项目进行独立评估,并选择最具成本效益的培训方式。通过调整商业环境中使用的通过贴现现金流来评估投资经济效率的方法,制定了选择最优培训轨迹的方法。可以认为,将高中生进入高等教育机构的额外准备投资视为父母作为投资者的投资项目是有意义的,该项目的目标是进入高等教育机构。为了评估培训投资和培训管理的有效性,研究人员开发了一种算法,用于选择进入高等教育机构的最具成本效益的准备轨迹,并以进入彼尔姆州立国立研究大学为例。该算法基于一个神经网络模型,该模型考虑了学生的输入参数:训练时间、额外课程的频率、动机水平和平均表现作为影响进入高等教育机构概率的因素。该算法可用于通过确定最具成本效益的方式使用财政资源来管理儿童额外教育的投资。在最终目标涉及儿童进入教育机构的情况下,使用开发的算法是权宜之计。在这种情况下,考虑到输入参数,从经济角度来看,模型的使用将为特定申请人提供最佳培训路径。
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来源期刊
Open Education Studies
Open Education Studies Social Sciences-Social Sciences (miscellaneous)
CiteScore
1.80
自引率
0.00%
发文量
19
审稿时长
27 weeks
期刊最新文献
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