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Multiple instance learning for classifying students in learning management systems
Authors:Amelia Zafra  Cristóbal Romero  Sebastián Ventura
Affiliation:1. US Naval Academy, United States;2. Laboratory for Telecommunication Sciences, United States;1. Software R&D Center, Samsung Electronics, 56 Seongchon-gil, Seocho-gu, Seoul, Republic of Korea;2. Department of Computer Science and Engineering, Korea University, 145 Anam-ro, Seongbuk-gu, Seoul, Republic of Korea;1. Agrocampus Ouest, 65, rue de Saint-Brieuc, 35042 Rennes, France;2. Université Rennes 1 - IGDR UMR CNRS 6290, 2 avenue du Professeur Léon Bernard, 35043 Rennes Cedex, France;3. Université Rennes 2, Place du recteur Henri le Moal, 35043 Rennes, France;4. IRMAR UMR CNRS 6625, 263 avenue du Général Leclerc, 35042 Rennes, France
Abstract:In this paper, a new approach based on multiple instance learning is proposed to predict student’s performance and to improve the obtained results using a classical single instance learning. Multiple instance learning provides a more suitable and optimized representation that is adapted to available information of each student and course eliminating the missing values that make difficult to find efficient solutions when traditional supervised learning is used. To check the efficiency of the new proposed representation, the most popular techniques of traditional supervised learning based on single instances are compared to those based on multiple instance learning. Computational experiments show that when the problem is regarded as a multiple instance one, performance is significantly better and the weaknesses of single-instance representation are overcome.
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