2018 9th International Conference on Awareness Science and Technology (iCAST) 2018
DOI: 10.1109/icawst.2018.8517222
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Classification of Online Judge Programmers based on Rule Extraction from Self Organizing Feature Map

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Cited by 20 publications
(9 citation statements)
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“…Saito and Watanobe (2020) proposed a learning path recommendation system based on a learner's ability charts by means of an RNN. Intisar and Watanobe (2018a) proposed a method for the classification of OJ programmers based on rule extraction from a self-organising feature map, cluster analysis to estimate the difficulty of programming problems (Intisar and Watanobe, 2018b), and classification of programming problems based on topic modelling (Intisar et al, 2019). Teshima and Watanobe (2018) presented bug detection methods for the feedback system of an OJ system.…”
Section: Related Researchmentioning
confidence: 99%
“…Saito and Watanobe (2020) proposed a learning path recommendation system based on a learner's ability charts by means of an RNN. Intisar and Watanobe (2018a) proposed a method for the classification of OJ programmers based on rule extraction from a self-organising feature map, cluster analysis to estimate the difficulty of programming problems (Intisar and Watanobe, 2018b), and classification of programming problems based on topic modelling (Intisar et al, 2019). Teshima and Watanobe (2018) presented bug detection methods for the feedback system of an OJ system.…”
Section: Related Researchmentioning
confidence: 99%
“…Jing et al [18] introduced a vocabulary learning model that calculates the incorrect classification cost for the prediction of source code defects. Various ML approaches [19][20][21] have been proposed for classification, recommendation, and estimation problems. Alreshedy et al [22] presented an ML-based language model for classifying source code snippets based on the programming language.…”
Section: Background and Literature Reviewmentioning
confidence: 99%
“…Along these lines, the use of Machine Learning (ML) over data collected from e-learning systems leveraged approaches and methods to tackle the performance prediction problem [11]. Such studies tended to depict the CS1 students' behaviours based on their interaction with the e-learning systems used to support their classes [11], [12], [21], [23], [29], [32], [49]. However, the literature still lacked a reliable method to predict CS1 students' performance [58].…”
Section: Introductionmentioning
confidence: 99%