Science for Education Today, 2022, vol. 12, no. 6, pp. 7–31
UDC: 
159.9.019+37.01

Main trends and priorities in Russian and international studies on cognitive and non-cognitive predictors of academic success

Fedina N. V. 1 (Lipetsk, Russian Federation), Dormidontov R. A. 1 (Lipetsk, Russian Federation), Eliseev V. K. 1 (Lipetsk, Russian Federation)
1 Lipetsk State Pedagogical P. Semenov-Tyan-Shansky University
Abstract: 

Introduction. The article addresses the problem of predicting students’ academic success. The purpose of the article is to identify the main trends and priorities in Russian and international research on cognitive and non-cognitive predictors of academic success.
Materials and Methods. As a methodological basis for the scientific analysis, systemic and action-oriented approaches are used, which make it possible to consider various concepts of this problem in the light of social changes in the development of society and educational systems.
The research methods used in this study include analysis of scholarly literature, comparison, clarification, synthesis of outcomes and generalization.
Results. The authors summarize and present trends and priorities in examining a group of predictors underlying academic success in Russian and international psychological and educational research over the past decade. The main research results consist in identifying the vector of the shift in emphasis in the studies of Russian and foreign scientists towards the priority of investigating non-cognitive predictors of the academic success of students.
It has been revealed that over the past decade, non-cognitive predictors of influence at different levels have increasingly become the topic of studies by Russian and international researchers: social (level of social adjustment of students), socio-economic (socio-economic status of the family, socio-economic composition of the school), socio-psychological (school climate), personal (attitudes and positions of parents and teachers), etc.
Conclusions. The level of development of society and the educational system inevitably adjusts the influence of factors (predictors) that determine the academic success of students. It has been revealed that currently the main trend and priority direction of Russian and international psychological and educational research are non-cognitive predictors: personal predictors and predictors of social influence at the macro and micro levels.

Keywords: 

Predicting academic success; Predictors of academic success; Cognitive predictors; Non-cognitive predictors; Personality predictors; Predictors of social influence.

For citation:
Fedina N. V., Dormidontov R. A., Eliseev V. K. Main trends and priorities in Russian and international studies on cognitive and non-cognitive predictors of academic success. Science for Education Today, 2022, vol. 12, no. 6, pp. 7–31. DOI: http://dx.doi.org/10.15293/2658-6762.2206.01
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Date of the publication 31.12.2022