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Vol. 41 (Number 06) Year 2020. Page 30

A model of information interaction between the components of an intelligent learning system

Un modelo de interacción de información entre los componentes de un sistema de aprendizaje inteligente

VOROBYEVA, Inessa Anatolyevna 1

Received: 10/09/2019 • Approved: 25/02/2020 • Published: 27/02/2020


Contents

1. Introduction

2. Materials and methods

3. Results

4. Discussion

Acknowledgements

Bibliographic references


ABSTRACT:

The article presents a model of information interaction between the subject of training and an intelligent learning system that helps to create the conditions for the formation of the competencies required for the future professional activity of students. The article examines the theoretical background for the technology of the instructional design of an intelligent learning system that can generate an educational environment that adapts to students’ capabilities in terms of the learning style and rate new educational material and that takes into account the students’ chosen type of professional activity.
Keywords: intelligent learning system, information technology, instructional design, tailored education, learner-centered education

RESUMEN:

El artículo presenta un modelo de interacción de información entre el tema de capacitación y un sistema de aprendizaje inteligente que ayuda a crear las condiciones para la formación de las competencias requeridas para la futura actividad profesional de los estudiantes. El artículo examina los antecedentes teóricos para la tecnología del diseño instruccional de un sistema de aprendizaje inteligente que puede generar un ambiente educativo que se adapte a las capacidades de los estudiantes en términos del estilo de aprendizaje y califique el nuevo material educativo y que tenga en cuenta los estudiantes elegidos. tipo de actividad profesional.
Palabras clave: sistema de aprendizaje inteligente, tecnología de la información, diseño instruccional, educación personalizada, educación centrada en el alumno

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1. Introduction

The Law on Education in the Russian Federation prescribes general rules for the education system operation, aimed at “creating conditions for self-fulfillment of each individual” and “freedom of choice to receive an education according to the aptitudes and needs of everyone” (Federal Law No. 273, 2012). In this regard, the higher education standards specify requirements for a learning environment for students with the purpose to execute the government order for university graduates (Federal Standard, 2018). So far, there has been a lot of research in the use of intelligent learning systems. The problems of student adaptation to the use of information and computer technologies were addressed many works (Bespalko, 1995; Krechetnikov, 2002; Okolelov, 1999; Selevko, 1998; Khutorskoy, 2001); the principles of learner-centered and competency-based approach, also applicable in information systems, were considered by Verbitsky and Kruglikov (1998), Shiyanov and Kotova (1999), and other researchers; the conceptual basis for new information technology development was dealt with by Mashbits (1988) and Tikhomirov (1977). Therefore, our first priority is to give a theoretical description of the fundamentals for using intelligent learning systems in the educational process.

The research and practical experience have allowed us to identify the fact that educational institutions do not fully use the whole potential of computer technology in the modern context, despite the fact that intelligent learning systems (ILSs), as one of the stages of software application in training, are adaptable. In the course of the study, it was necessary to theoretically and methodologically substantiate the instructional design of an intelligent teaching system that would generate an adaptive educational environment aiming to enhance common cultural and professional competencies in undergraduate students. The goal of the present study is to theoretically and methodologically substantiate the instructional design of intelligent learning systems aimed at forming undergraduate student competencies.

Most literature sources view e-learning systems as the possibility to use online materials outside the school. Cemile, Nur, and Lakhmi (2008) present an adaptive intellectual learning system that monitors students’ learning process in accordance with their profile, and describe a case study of using this system (Xu, Wang, and Wang, 2005).

Xu, Wang, and Wang (2005) describe a conceptual model of personalized virtual learning environments, which is one of the rapidly evolving areas of educational technology research and development. Mona and Sanaa (2016) describe an intelligent learning system for teaching Arabic grammar, which consists of a training module, a module for selecting questions, an expert module, a student model, and a graphical user interface (Mona et al., 2016). Stellan Ohlsson (1993) describes the possibility of using various gadgets in training. His research shows the extended use of learning programs as mobile applications, which improves student performance.

2. Materials and methods

The methodological framework of the study was composed of the theoretical background and conclusions contained in the fundamental and applied studies of domestic and foreign authors on the data systems engineering (Mashbits, 1988; Tikhomirov, 1977), as well as on the problems of forming professional competencies in students, social design of instructional systems and educational parks management (Verbitsky and Bakshaev, 1988; K.G. Krechetnikov, 2002; Okolelov, 1999; Selevko, 1998; Khutorskoy, 2001). The research is based on the concepts of vocational pedagogy, computer science, and instructional systems design.

The paper uses such research methods as analysis of literature on the problems of vocational education, the use of information technologies in the educational process, analysis and generalization of theoretical principles and conclusions, analysis of documents governing the formation of undergraduate student competencies, questionnaires, testing, etc.

A preliminary experiment was conducted among students majoring in Mathematical Methods in Economics, Applied Information Science in Economics, and Computer Science. The intelligent learning system developed in accordance with theoretical principles and conclusions was used to organize students’ self-directed leaning with a subsequent knowledge assessment. Their knowledge was assessed using the learning system tests.

An intelligent learning system is a computer program consisting of a certain action rule set in this program and rules for educational and assessment content supply (Ding et al., 2016). These rules are subject to requirements for the learning system and take into account the learner’s behavior, their level of earlier and newly acquired competence, and their aptitude to the selected type of professional activity. The actions carried out by the ILS occur according to the rules of expert systems capable of resolving problem situations. Their key feature is the ability to find the optimal solution under given conditions to achieve the best result (Yakhneeva et al., 2020). Thus, ILSs operate according to the principles of expert systems that implement expert action models within a certain knowledge domain, in this case impersonating the teacher, using inference and decision-making procedures and a database comprising information required for forming student competencies and a collection of rules for its inference and updating.

When using the ILS, an individual modular educational path is generated for each student, with specific goals and objectives for the current and subsequent periods. Competencies are formed in accordance with the identified degree of students’ propensity for the chosen type of professional activity (general abilities, elementary special abilities, and vocational abilities), as well as the level of competence available at the time of using the ILS. Each ILS user can opt for a path to study the proposed learning content required to form the selected competencies. The user environment where they carry out their educational activities should provide comfortable conditions, take into account the requirements of engineering psychology and ergonomics, and be easily navigable (Salih, 2019).

Figure 1
Tree of tasks solved in ILS

Source: compiled by the authors

Figure 2
Information interaction pattern of subordinate
functional components in task solving

Source: compiled by the authors

Let us provide a mathematical description of connections between the subordinate components, implemented in solving the task to form student competencies Z. To do this, we will sequentially consider the structures of input and output sets and their connection with the global learning task.

Figure 3
A set-theoretic model of information
interaction of ILS components

Source: compiled by the authors

3. Results

As part of the preliminary experiment with second-year students majoring in Mathematical Methods in Economics and Applied Information Science in Economics on the use of ILS for generating an individual educational environment, testing was conducted with the aim of identifying the level of competence in the Numerical Methods discipline after the first month of training. Eighty-eight second-year students were tested, comprising 28 students majoring in Mathematical Methods in Economics, 25 in Applied Information Science in Economics, and 35 in Information Science. The results of testing the students majoring in Mathematical Methods in Economics are presented in Table 1.

Table 1
Results of testing second-year students majoring
in mathematical methods in economics

Let us find the numerical characteristics of the resulting sample. The arithmetic mean is calculated by the formula,

For this purpose, we draw up a calculation table.

Table 2
Sample variance
calculation table

-----

Table 3
Results of testing second-year students majoring
in applied information science in economics

Table 4
Sample variance
calculation table

-----

Table 5
Results of testing second-year students
majoring in information science

-----

Table 6
Sample variance
calculation table

Table 7
Results of final assessment of numerical methods competence of
students majoring in mathematical methods in economics (control group)

-----

Table 8
Sample variance
calculation table

-----

Table 9
Results of final assessment of numerical methods competence of students
majoring in applied information science in economics (experimental group)

-----

Table 10
Sample variance calculation table

4. Discussion

The above model of information interaction of the intelligent learning system components aims to solve general and (or) specific tasks arising in ILSs, namely to assess students’ individual abilities and the knowledge acquired, to generate an individual learning path, to form information content from the knowledge database, and to monitor the acquired competencies in real time mode. The tasks are carried out by means of software from among the information support and by implementing the information functions of the intelligent instructional components in the ILS.

Acknowledgements

I would like to extend my gratitude to my research advisor, Professor at the Department of Preschool and Primary Education of Lipetsk State Pedagogical P. Semenov-Tyan-Shansky University, Mariya Vasilyevna Lazareva for her recommendations on the research and assistance in the manuscript finalization.

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1.  Institute of Natural Mathematical and Engineering Sciences, Department of Mathematics and Physics, Lipetsk State Pedagogical P. Semenov-Tyan-Shansky University, Lipetsk, Russia. Contact e-mail: inessa.vorobyeva@yandex.ru


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