Improvement and Design of Genetic Algorithm in Personalized Test Paper Composition System

Liping Ma, Xun Zhu, Q. Feng
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引用次数: 1

Abstract

Based on the question of test papers in personalized learning, this paper makes special improvements and designs for the individual genotype, selection, crossover, and mutation processes in traditional genetic algorithms. At the same time, in the design of the fitness function, based on the disadvantages that the dimension cannot be unified when calculating the fitness function by linear weighting method in the traditional literature, a vector distance calculation method was selected to calculate the objective function, which solved the unification of different constraints Questions that differ between dimensions. In addition, based on the problem that duplicate questions may appear in one test paper, this paper designs a deduplication operator and adds it to the step of genetic algorithm.
遗传算法在个性化考卷系统中的改进与设计
针对个性化学习中的试卷问题,对传统遗传算法中的个体基因型、选择、交叉和突变过程进行了特殊的改进和设计。同时,在适应度函数的设计中,针对传统文献中采用线性加权法计算适应度函数时维度无法统一的缺点,选择向量距离计算方法计算目标函数,解决了不同维度之间存在差异的不同约束的统一问题。此外,针对一卷试卷可能出现重复题的问题,设计了一个重复题算子,并将其加入到遗传算法的步骤中。
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