Big Data Course Multidimensional Evaluation Model based on Knowledge Graph enhanced Transformer

Ning Liu, Yeyangyi Xiang, Fei Wang, Shuyu Cao
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引用次数: 0

Abstract

Based on the positioning of training application-oriented and innovative talents in the field of big data, this article aims to address the current situation where the theoretical system of big data course is not complete, the experimental system is unreasonable, and the assessment indicators are not perfect. A Transformer based “1 + 1 + N” big data course unified system and multidimensional evaluation model is constructed, reforms and practices are carried out in terms of improving the course theoretical system, increasing unit experiments and comprehensive experiment cases, and improving process assessment. The Transformer based multi-dimensional evaluation model of the big data course is proposed to solve the current problems of heavy theory and light practice, heavy standardization assessment and light innovation ability training in the course. The proposed course unified system and multidimensional evaluation model had achieved remarkable results, effectively increasing students’ construction of the big data professional knowledge system, enhancing students’ subjective initiative in learning the course, and significantly improving students’ innovative ability and ability to comprehensively solve practical problems.
基于知识图谱的大数据课程多维评价模型增强变压器
本文以培养大数据领域应用型创新型人才为定位,针对目前大数据课程理论体系不完善、实验体系不合理、考核指标不完善的现状。构建了基于Transformer的“1 + 1 + N”大数据课程统一体系和多维评价模型,从完善课程理论体系、增加单元实验和综合实验案例、完善过程评价等方面进行了改革与实践。针对当前大数据课程重理论轻实践、重标准化考核、轻创新能力培养的问题,提出了基于Transformer的大数据课程多维度评价模型。所提出的课程统一体系和多维度评价模型取得了显著效果,有效促进了学生对大数据专业知识体系的构建,增强了学生学习课程的主观能动性,显著提高了学生的创新能力和综合解决实际问题的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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