Matematik Başarısını Etkileyen Duyuşsal Özelliklerin Yem ve Mars Yöntemleri ile İncelenmesi
Özet
The aim of the study is to examine the affective characteristics that affect
mathematics achievement with Structural Equation Modeling and MARS data
mining methods. Structural Equation Modeling is a model that requires very intense
assumptions. This model, which is a rooted analysis family, is very popular for social
sciences due to its various advantages. Could there be an alternative to this
analysis, a more understandable and flexible structure? It is intended to seek an
answer to this question. In parallel with this aim, firstly, SEM was established with
the R program with the affective data selected from the TIMMS 2019 data and the
success variable. Later, the MARS model was established with SPM. The results
were compared on the goodness of fit and coefficients. As a result, it was concluded
that the MARS model could be an alternative analysis at certain points. In particular,
the fact that regression analysis is the basis of both statistical analyzes increases
this possibility. It has been seen that the MARS model gives slightly better results
than SEM in terms of prediction, and the MARS model gives more consistent results
with the literature.