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Multi-task MIML learning for pre-course student performance prediction 被引量:1

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摘要 In higher education,the initial studying period of each course plays a crucial role for students,and seriously influences the subsequent learning activities.However,given the large size of a course’s students at universities,it has become impossible for teachers to keep track of the performance of individual students.In this circumstance,an academic early warning system is desirable,which automatically detects students with difficulties in learning(i.e.,at-risk students)prior to a course starting.However,previous studies are not well suited to this purpose for two reasons:1)they have mainly concentrated on e-learning platforms,e.g.,massive open online courses(MOOCs),and relied on the data about students’online activities,which is hardly accessed in traditional teaching scenarios;and 2)they have only made performance prediction when a course is in progress or even close to the end.In this paper,for traditional classroom-teaching scenarios,we investigate the task of pre-course student performance prediction,which refers to detecting at-risk students for each course before its commencement.To better represent a student sample and utilize the correlations among courses,we cast the problem as a multi-instance multi-label(MIML)problem.Besides,given the problem of data scarcity,we propose a novel multi-task learning method,i.e.,MIML-Circle,to predict the performance of students from different specialties in a unified framework.Extensive experiments are conducted on five real-world datasets,and the results demonstrate the superiority of our approach over the state-of-the-art methods.
出处 《Frontiers of Computer Science》 SCIE EI CSCD 2020年第5期113-121,共9页 中国计算机科学前沿(英文版)
基金 This work was supported by the National Natural Sci-ence Foundation of China(Grant Nos.61701281,61573219,and 61876098) Shandong Provincial Natural Science Foundation(ZR2016FM34 andZR2017QF009) Shandong Science and Technology Development Plan(J18KA375),Shandong Social Science Project(18BJYJ04) the Foster-ing Project of Dominant Discipline and Talent Team of Shandong ProvinceHigher Education Institutions.
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  • 1Mitchell TM. Machine Learning. New York: McGraw-Hill, 1997. 被引量:1
  • 2Tsoumakas G, Katakis I. Multi-Label classification: An overview. Int’l Journal of Data Warehousing and Mining, 2007,3(3): 1-13. [doi: 10.4018/j dwm.2007070101]. 被引量:1
  • 3Zhang ML, Zhou ZH. A review on multi-label learning algorithms. IEEE Trans, on Knowledge and Data Engineering, 2014,26(8): 1819-1837. [doi: 10.1109/TKDE.2013.39]. 被引量:1
  • 4Schapire RE, Singer Y. BoosTexter: A boosting-based system for text categorization. Machine Learning, 2000,39(2/3):135-168. [doi: 10.1023/A: 1007649029923]. 被引量:1
  • 5McCallum A. Multi-Label text classification with a mixture model trained by EM. In: Proc. of the Working Notes of the AAAI’99 Workshop on Text Learning. 1999. 被引量:1
  • 6Boutell MR, Luo J, Shen X, Brown CM. Learning multi-label scene classification. Patter Recognition, 2004,37(9):1757-1771. [doi: 10.1016/j.patcog.2004.03.009]. 被引量:1
  • 7Elisseeff A, Weston J. A kernel method for multi-labelled classification. In: Proc. of the Advances in Neural Information Processing Systems 14. Cambridge: MIT Press, 2002. 681-687. 被引量:1
  • 8Clare A, King RD. Knowledge discovery in multi-label phenotype data. Lecture Notes in Computer Science, 2001,2168:42-53. [doi: 10.1007/3-540-44794-6 4]. 被引量:1
  • 9Barutcuoglu Z, Schapire RE, Troyanskaya OG. Hierarchical multi-label prediction of gene function. Bioinformatics, 2006,22(7): 830-836. [doi: 10.1093/bioinformatics/btk048]. 被引量:1
  • 10Song Y, Zhang L, Giles LC. A sparse Gaussian processes classification framework for fast tag suggestions. In: Proc. of the 17th ACM Conf. on Information and Knowledge Management. 2008. 93-102. [doi: 10.1145/1458082.1458098]. 被引量:1

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