2020
DOI: 10.1109/access.2020.3033200
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Multiple Features Fusion Attention Mechanism Enhanced Deep Knowledge Tracing for Student Performance Prediction

Abstract: Student performance prediction is a fundamental task in online learning systems, which aims to provide students with access to active learning. Generally, student performance prediction is achieved by tracing the evolution of each student's knowledge states via a series of learning activities. Every learning activity record has two types of feature data: student behavior and exercise features. However, most methods use features that are related to exercises, such as correctness and concepts, while other studen… Show more

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Cited by 42 publications
(34 citation statements)
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“…The last study by Klingler et al [13] proposed Dynamic 4, DKT is the most widely proposed model. DKT utilizes a Recurrent Neural Network (RNN) to trace students' knowledge states by finding the hidden structure of each exercise's correlation and analyzing student answers [3], [24]. DKT also captures complex high-dimensional features of items and students [26].…”
Section: Fig3 Distribution Of Proposed Models Using a Probabilistic Approachmentioning
confidence: 99%
See 1 more Smart Citation
“…The last study by Klingler et al [13] proposed Dynamic 4, DKT is the most widely proposed model. DKT utilizes a Recurrent Neural Network (RNN) to trace students' knowledge states by finding the hidden structure of each exercise's correlation and analyzing student answers [3], [24]. DKT also captures complex high-dimensional features of items and students [26].…”
Section: Fig3 Distribution Of Proposed Models Using a Probabilistic Approachmentioning
confidence: 99%
“…The AUC score obtained was 87.86%. Whereas Liu et al [24] proposed the multiple features fusion attention mechanism enhanced deep knowledge tracing (MFA-DKT) model. This model has an AUC score of 96%.…”
Section: Fig3 Distribution Of Proposed Models Using a Probabilistic Approachmentioning
confidence: 99%
“…We hope to obtain real-time information on the learning status of students so that teachers can intervene in the learning status of students in time and help students better master the content of this course [11]. In order to achieve this goal, we consider establishing a student performance prediction system to evaluate student performance [12].…”
Section: Introductionmentioning
confidence: 99%
“…However, unlike the single matrix in MANN, DKVMN uses two matrices a key matrix for latent concepts and value matrix for student mastery level. More recently, transformers have also been applied to train DKTs [225][226][227]. Since they employ a self-attention mechanism, information encoded by transformers may also be interpreted.…”
Section: Other Applications Of Deep Neural Network Inmentioning
confidence: 99%
“…Random forests [174,197,199], k-nearest neighbours [204], Neural networks [177,200,[208][209][210]219], Bayesian networks [197,210,214], Regression models [174,177,178,188,198,205,206,213,216,217], Nave Bayes [174,214], Rule-based systems [197,207,209,221], Decision trees [174, 183, 196-198, 210, 214], Correlational analysis [220], Support vector machines [198,214], Matrix factorization & collaborative filtering [200-203, 211, 212], Cox proportional hazard model [215] Deep knowledge tracing -Deep knowledge tracing [31,222,223], Memory-augmented neural networks [224], Transformers [225][226][227] Chapter 6…”
Section: Video Watching Behaviourmentioning
confidence: 99%