A Big Data Based Method for Pass Rates Optimization in Mathematics University Lower Division Courses


연구 분야: Databases



학회: SN Computer Science


초록

In this paper a big data based method is presented, for the enhancement of pass rates in massive lower division courses of mathematics at University level. We propose the student-lecturer match as the cornerstone of our optimization process. First, we use the available historical data to compute the success probabilities of students-lecturer within profile segments. Next, using integer programming models, the method finds the optimal pairings of students-lecturers, in order to maximize the success (pass) chances of the students’ body. Throughout the paper, we will present in parallel the examination of our method as an economic process, as well as its importance for public universities in underdeveloped countries.


Author Profile
Cristian C. Chica

School of Mathematics University of Minnesota 127 Vincent Hall 206 Church St. SE Minneapolis MN 55455 USA

Mongolia
Author Profile
Fernando A. Morales

Departamento de Matemáticas Universidad Nacional de Colombia Sede Medellín Carrera 65 #59A-110 Bloque 43 of 106 Medellín Colombia

Colombia
Author Profile
Carlos A. Osorio

Departamento de Matemáticas Universidad Nacional de Colombia Sede Medellín Carrera 65 #59A-110 Bloque 43 of 106 Medellín Colombia

Colombia

📄 논문 정보

발행 연도 2025년
인용수 0
출판 국가 Colombia, Mongolia
사이트 Springer
좋아요 수 0

연관 논문 목록 (31건)