STRUCTURAL MODEL OF INFLUENTIAL EXTRINSIC FACTORS IN FLIPPED LEARNING

被引:37
|
作者
Mengual-Andres, Santiago [1 ]
Lopez Belmonte, Jesus [2 ]
Fuentes Cabrera, Arturo [3 ]
Pozo Sanchez, Santiago [4 ]
机构
[1] Univ Valencia, Dept Educ Comparada & Hist Educ, Fac Filosofia & Ciencias Educ, Avda Blasco Ibanez 13, Valencia 46010, Spain
[2] Univ Int Valencia, Dept Educ, C Pintor Sorolla 21, Valencia 46002, Spain
[3] Univ Granada, Dept Metodos Invest & Diagnost Educ, Fac Educ Econ & Tecnol Ceuta, C Cortadura Valle S-N, Ceuta 51001, Spain
[4] Univ Granada, Dept Didact & Org Escolar, C Cortadura Valle S-N, Ceuta 51001, Spain
来源
EDUCACION XX1 | 2020年 / 23卷 / 01期
关键词
Information and communication technologies; educational innovation; learning process; flipped learning; learning conditions; structural analysis; OUT-OF-CLASS; HIGHER-EDUCATION; STUDENT SATISFACTION; CLASSROOM; PERSPECTIVES; PERFORMANCE; INSTRUCTION; DESIGN; IMPACT;
D O I
10.5944/educXX1.23840
中图分类号
G40 [教育学];
学科分类号
040101 ; 120403 ;
摘要
Technological advances have caused the field of education to be influenced by the emergence of new teaching and learning models mediated by the large amount of digital resources and electronic devices that teachers have today. One of the methodological approaches that is emerging as a consequence of educational innovation is flipped learning. This model of teaching and learning is based on the idea that students can visualize and work on the contents of the next classroom sessions outside the academic environment, in order to spend as much time as possible in class solving problems and the deployment of more practical, participatory and active work. In this way, greater motivation is achieved that benefits the learning process. The objective of this study has been to discover the incidence of external factors such as family context, autonomy, self-esteem and the motivation of students on the flipped learning approach. For this, a quantitative method has been developed through an experimental design of longitudinal cut and of descriptive and correlational nature. A diachronic sample (2013-2018) of 607 students was taken from the Faculty of Education, Economy and Technology of Ceuta (Spain). A previously validated ad hoc questionnaire was used to collect data. The results reveal that students who have a suitable family context, as well as adequate values in autonomy, motivation and self-esteem achieve optimal values in learning outcomes. Likewise, older students obtain better ratings. On the other hand, those with labor obligations reflect a decrease in the same, with the sex of the participants not determining the learning outcomes.
引用
收藏
页码:75 / 101
页数:27
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