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RCD: Relation Map Driven Cognitive Diagnosis for Intelligent Education Systems
133
Citations
39
References
2021
Year
Unknown Venue
Artificial IntelligenceCd SystemsEngineeringEducationConcept MappingCognitionIntelligent SystemsIntelligent Tutoring SystemCognitive TechnologyEducational InterdependenciesData ScienceCognitive DevelopmentCognitive AnalysisCognitive DiagnosisCognitive ComputingIntelligent Education SystemsCognitive InformaticsCognitive ScienceEducational Data MiningLearning AnalyticsComputer ScienceSemantic NetworkAutomated Reasoning
Cognitive diagnosis (CD) is a fundamental issue in intelligent educational settings, which aims to discover the mastery levels of students on different knowledge concepts. In general, most previous works consider it as an inter-layer interaction modeling problem, e.g., student-exercise interactions in IRT or student-concept interactions in DINA, while the inner-layer structural relations, such as educational interdependencies among concepts, are still underexplored. Furthermore, there is a lack of comprehensive modeling for the student-exercise-concept hierarchical relations in CD systems. To this end, in this paper, we present a novel Relation map driven Cognitive Diagnosis (RCD) framework, uniformly modeling the interactive and structural relations via a multi-layer student-exercise-concept relation map. Specifically, we first represent students, exercises and concepts as individual nodes in a hierarchical layout, and construct three well-defined local relation maps to incorporate inter- and inner-layer relations, including a student-exercise interaction map, a concept-exercise correlation map and a concept dependency map. Then, we leverage a multi-level attention network to integrate node-level relation aggregation inside each local map and balance map-level aggregation across different maps. Finally, we design an extendable diagnosis function to predict students' performance and jointly train the networks. Extensive experimental results on real-world datasets clearly show the effectiveness and extendibility of our RCD in both diagnosis accuracy improvement and relation-aware representation learning.
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