基于智能算法的人工智能教育评价指标构建与优化

Pub Date : 2022-01-01 DOI:10.4018/ijcini.315275
Yuansheng Zeng, Xing Xu
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引用次数: 0

摘要

层次分析法的基本工具是完整的判断矩阵。针对AHP在综合评价系统中确定权重的弱点,本文在元启发式算法中的粒子群优化算法的基础上,提出了粒子群优化(PSO)-AAHP模型。将该模型用于求解福建省中小学人工智能教育评价体系中的指标权重,并与遗传算法和作战策略优化算法进行了比较。从比较结果来看,PSO-AHP优化在三种算法中更有效,指标一致性可以提高约30%。它们都有效地解决了AHP中一旦给出判断矩阵,权重和指标一致性就无法提高的问题。最后,用Friedman统计量对结果进行了检验,证明了该算法的可行性。
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The Construction and Optimization of an AI Education Evaluation Indicator Based on Intelligent Algorithms
The basic tool in the analytic hierarchy process (AHP) is the complete judgment matrix. To address the weakness of the AHP in determining weight in the comprehensive evaluation system, the particle swarm optimization (PSO)-AHP model proposed in this paper is based on the PSO in the meta-heuristic algorithm. The model was used to solve the indicator weights in the evaluation system of AI education in primary and secondary schools in Fujian Province and was compared with the genetic algorithm and war strategy optimization algorithm. From the comparison results, the PSO-AHP optimization is more effective among the three algorithms, and the indicator consistency can be improved by about 30%. They are both effective in solving the problem that once the judgment matrix is given in the AHP, the weights and indicator consistency cannot be improved. Finally, the results were tested by Friedman statistics to prove the viability of the proposed algorithm.
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