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Multi-attention fusion modeling for sentiment analysis of educational big data

Guanlin Zhai, Yan Yang, Heng Wang, Shengdong Du

2020Big Data Mining and Analytics90 citationsDOIOpen Access PDF

Abstract

As an important branch of natural language processing, sentiment analysis has received increasing attention. In teaching evaluation, sentiment analysis can help educators discover the true feelings of students about the course in a timely manner and adjust the teaching plan accurately and timely to improve the quality of education and teaching. Aiming at the inefficiency and heavy workload of college curriculum evaluation methods, a Multi-Attention Fusion Modeling (Multi-AFM) is proposed, which integrates global attention and local attention through gating unit control to generate a reasonable contextual representation and achieve improved classification results. Experimental results show that the Multi-AFM model performs better than the existing methods in the application of education and other fields.

Topics & Concepts

Computer scienceSentiment analysisInefficiencyWorkloadCurriculumArtificial intelligenceRepresentation (politics)Control (management)Machine learningPlan (archaeology)Data sciencePsychologyPedagogyHistoryLawOperating systemPolitical scienceArchaeologyMicroeconomicsEconomicsPoliticsSentiment Analysis and Opinion Mining