bachelorThesis
Comparativa de modelos de clasificación para inferir la probabilidad de deserción estudiantil en la Facultad de Ciencias Químicas de la Universidad de Cuenca
Fecha
2021-03-05Autor
Palacios Alvear, Karla Rafaela
Institución
Resumen
This degree work shows an application of comparative classification models,
through specific variables, to determine the university dropout of students from the
Faculty of Chemical Sciences of the University of Cuenca. In this context, through data
mining, two classification models were applied: K- nearest neighbors (knn) and logistic
regression to classify first-year students into two populations: dropout or permanence.
The data was obtained from the socio-economic record of the students from 2014 to
2018, in addition, the population groups corresponding to those who dropped out in the
first year and those who continued with their studies were identified. Based on this, it
was possible to interrelate the variables to group them through principal component
analysis (PCA). The data were separated for training and validation of the models. The
systems were modeled in RapidMiner generating a confusion matrix, which allowed
determining that the knn model presents a better current of 73.30% compared to
54.67% of the Logistic Regression model. Additionally, it was concluded that the most
relevant variables are those that make up the main component 1: total income, total
expenses, monthly rent payment, type of high school, cumulative valuation of vehicles.
Through the confusion matrix, the models (knn and rl) were evaluated, selecting the
knn model as the best option.