Kazan Federal University Digital Repository

QUANTITATIVE LARGE-SCALE STUDY OF SCHOOL STUDENT'S ACADEMIC PERFORMANCE PECULIARITIES DURING DISTANCE EDUCATION CAUSED BY COVID-19

Show simple item record

dc.contributor Казанский федеральный университет
dc.contributor.author Юнусов Валентин Андреевич
dc.contributor.author Гилемзянов Алмаз Фирдинантович
dc.contributor.author Гафаров Фаиль Мубаракович
dc.contributor.author Устин Павел Николаевич
dc.contributor.author Халфиева Алиса Рамилевна
dc.date.accessioned 2023-06-30T09:08:36Z
dc.date.available 2023-06-30T09:08:36Z
dc.date.issued 2023
dc.identifier.citation Quantitative large-scale study of school student's academic performance peculiarities during distance education caused by COVID-19 / V. A. Yunusov, A. F. Gilemzyanov, F. M. Gafarov [et al.] // Proceedings of the Institute for Systems Analysis Russian Academy of Sciences. - 2023. - Vol. 73, No. 1. - P. 110-120. - DOI 10.14357/20790279230113
dc.identifier.uri https://dspace.kpfu.ru/xmlui/handle/net/176368
dc.description.abstract The paper presents the large-scale analysis results of the distance learning impact caused by COVID-19 and its influence on school student's academic performance. This multidisciplinary study is based on the large amount of the raw data containing school student's grades from 2015 till 2021 academic years taken from "Electronic education in Tatarstan Republic" system. The analysis is based on application of BigData and mathematical statistics methods, realized by using Python programming language. Dask framework for parallel cluster-based computation, Pandas library for data manipulation and large-scale analysis data is used. One of the main priorities of this paper is to identify the impact of different educational system's factors on school student's academic performance. For that purpose, the quantile regression method was used. This method is widely used for processing a large-scale data of various experiments in modern data science. Quantile regression models are designed to determine conditional quantile functions. Therefore, this method is especially suitable to exam conditional effects at various locations of the outcome distribution: e.g., lower and upper tails. The study-related conditional factors include such factors as student's marks from previous academic years, types of lessons in which grades were obtained, and various teacher's parameters such as age, gender and qualification category.
dc.language.iso ru
dc.relation.ispartofseries PROCEEDINGS OF THE INSTITUTE FOR SYSTEMS ANALYSIS RUSSIAN ACADEMY OF SCIENCES
dc.rights только для КФУ
dc.subject DATA SCIENCE
dc.subject BIG DATA
dc.subject PYTHON
dc.subject DASK
dc.subject QUANTILE REGRESSION
dc.subject CONDITIONAL QUANTILE FUNCTIONS
dc.subject COVID-19
dc.subject.other Кибернетика
dc.subject.other Общественные науки в целом
dc.subject.other Психология
dc.title QUANTITATIVE LARGE-SCALE STUDY OF SCHOOL STUDENT'S ACADEMIC PERFORMANCE PECULIARITIES DURING DISTANCE EDUCATION CAUSED BY COVID-19
dc.type Article
dc.contributor.org Институт психологии и образования
dc.description.pages 110-120
dc.relation.ispartofseries-volume 73
dc.pub-id 282895
dc.identifier.doi 10.14357/20790279230113


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Advanced Search

Browse

My Account

Statistics