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IMPACT OF THE WEB APPLICATION FOR THE EDUCATIONAL PROCESS ON THE COMPOUND INTEREST CONSIDERING DATA SCIENCE

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Author(s)
Ricardo Adan SALAS-RUEDA
Erika Patricia SALAS-RUEDA
Rodrigo David SALAS-RUEDA
Keywords
technology
higher education
web application
machine learning
data science
Special aspects of education
LC8-6691

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URI
http://hdl.handle.net/20.500.12424/3960695
Online Access
https://doaj.org/article/dfddccf993f843429ddfd68a356ed4fb
Abstract
This quantitative research analyzes the impact of the Web Application for the Educational Process on Compound Interest (WAEPCI) considering the machine learning and data science. The sample is composed of 46 students who studied the Financial Mathematics course in a Mexican university during the 2017 school year. WAEPCI presents the calculation of the Compound Interest and Compound Amount over a period of four years through the data simulation. The results of the machine learning (linear regression) indicate that WAEPCI positively influences the assimilation of knowledge and development of mathematical skills on the Compound Interest and Compound Amount. Data science establishes 4 predictive models on the use of WAEPCI in the educational process by means of the decision tree technique. The construction of web applications facilitates the active role of students, improves the assimilation of knowledge and allows the development of skills. Finally, WAEPCI improves the teaching-learning conditions on Financial Mathematics through the data simulation.
Date
2020-07-01
Type
Article
Identifier
oai:doaj.org/article:dfddccf993f843429ddfd68a356ed4fb
10.17718/tojde.762030
1302-6488
https://doaj.org/article/dfddccf993f843429ddfd68a356ed4fb
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Turkish Online Journal of Distance Education

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